Appendix A. PCA Variances and Graphs
In this appendix, we present the complementary results for the experiments developed in order to have a bigger set of results to generate better insights and conclusions about the PCA analysis (and the variances obtained) applied in the max-cut problems solved using QAOAs.
The PCA explained variance for the 4n complete max-cut problem is presented in
Table A1. For the
models, the entangled model exhibits more variance in PCA 1 and PCA 2. However, an interesting aspect to note is that the variance in PCA 3 for the entangled model is almost zero, which is a completely different phenomenon compared to the previous explained variances of the 4n cyclic problem. The variance for the
models is closer to the one observed in the previous problem. In both entangled models, the variances in PCA 1 increase compared to the same number of parameter models without entanglement.
Table A1.
Individual PCA projections explained variance (4n complete) for the first 3 PCA components.
Table A1.
Individual PCA projections explained variance (4n complete) for the first 3 PCA components.
Parameters | PCA 1 | PCA 2 | PCA 3 |
---|
3 parameters | 0.50298884 | 0.311534 | 0.18547716 |
3 parameters ent | 0.57473804 | 0.42450533 | 0.00075663 |
6 parameters | 0.2283193 | 0.21189936 | 0.18558982 |
6 parameters ent | 0.23935453 | 0.22027888 | 0.18451389 |
Upon analyzing
Figure A1, we observe that, for the
models, the behavior of the non-entangled model (red) is similar to the previous problem, where the major change is presented in the PCA 1 vs. PCA 2 graph, which has the same type of linear distribution but with a different orientation. In the entangled model (blue), there is a two-line cluster pattern that differs from the previous result. It is interesting to note that these two clusters are presented in the PCA 1 vs. PCA 2 and PCA 2 vs. PCA 3 graphs, only changing the perspective. In the case of the
models, the green model (non-entangled) has a similar distribution as before, with a random dispersion of points in the different plane perspectives, with no distinguishable clusters or patterns. However, for the entangled model (purple), the three-cluster behavior from the cyclic problem can be observed in the PCA 1 vs. PCA 2 graph again. This phenomenon could represent an increase in correlations between the data when the entanglement stage is implemented.
Figure A1.
PCA individual graphs for 4n complete configuration max-cut problem solved using QAOA, first 3 components. Red corresponds to the parameter non-entangled, blue parameter entangled, green parameter non-entangled, and purple parameter entangled model.
Figure A1.
PCA individual graphs for 4n complete configuration max-cut problem solved using QAOA, first 3 components. Red corresponds to the parameter non-entangled, blue parameter entangled, green parameter non-entangled, and purple parameter entangled model.
The explained variance for pair PCA models for
and
(corresponding to
and
of depth, respectively) presented in
Table A2 corresponds to the 4n complete max-cut problem. The variances obtained are similar to those in the cyclic problem, with the only noticeable difference being the variance in the PCA 3 component for the
pair PCA, which is considerably lower than in the previous problem. For the
pair PCA, the values are pretty close to one another, differing at most by
in the first three PCA components.
Table A2.
Pair PCA projections explained variance for the first 3 PCA components for the 4n complete max-cut problem.
Table A2.
Pair PCA projections explained variance for the first 3 PCA components for the 4n complete max-cut problem.
Parameters | PCA 1 | PCA 2 | PCA 3 |
---|
3 parameters | 0.4655341 | 0.34885069 | 0.18561521 |
6 parameters | 0.21851466 | 0.18343424 | 0.17652118 |
The pair PCA graphs for the 4n max-cut complete configuration problem are shown in
Figure A2. For the
models (red and blue), the PCA 1 vs. PCA 2 graph shows patterns similar to those observed in the individual PCA graphs. In the PCA 2 vs. PCA 3 graph, the pattern appears to be preserved for the non-entangled model, while the entangled model shows a distribution of points that is closer together. It is worth noting that the blue points in the PCA 1 vs. PCA 3 graph are contained in a particular line pattern that shows a clear difference between the projection of the non-entangled and entangled models. Moving on to the
models (green and purple), the first PCA 1 vs. PCA 2 graph shows a scatter distribution of points for the non-entangled model (green), while the entangled model (purple) has two lightly clustered areas that are barely distinguishable. However, in the PCA 1 vs. PCA 3 graph, there is a clear pattern of three elliptic clusters for the entangled model. Adding the PCA 2 and PCA 3 graph with two clusters presented in the entangled model, these clusters can be interpreted as the pair PCA model being capable of detecting particular correlations between the non-entangled and entangled data due to the distribution of values from the different models. Overall, the pair PCA graphs suggest that the entanglement stage is capable of revealing additional information about the correlations between the different models.
Figure A2.
PCA pair graphs for 4n complete configuration max-cut problem solved using QAOA, first 3 components. Red corresponds to the parameter non-entangled, blue parameter entangled, green parameter non-entangled, and purple parameter entangled model.
Figure A2.
PCA pair graphs for 4n complete configuration max-cut problem solved using QAOA, first 3 components. Red corresponds to the parameter non-entangled, blue parameter entangled, green parameter non-entangled, and purple parameter entangled model.
The explained variances for the 10n cyclic max-cut problem are presented in
Table A3. For this problem, we compiled results for three different levels of depth:
(
parameters),
(
parameters), and
(
parameters). The first two models (
and
) have similar results compared with the previous cyclic problem for 4n. However, it is important to mention that the entangled models with
and
parameters increase the amount of variance in the PCA 1 component compared with the non-entangled models. Additionally, the PCA 2 and PCA 3 components have more variance in general compared with the non-entangled models (including the
model). This increase in variance around the components is due to the entanglement stage, which increases the amount of covariances between the elements.
Table A3.
Individual PCA projections explained variance (10n cyclic) for the first 3 PCA components.
Table A3.
Individual PCA projections explained variance (10n cyclic) for the first 3 PCA components.
Parameters | PCA 1 | PCA 2 | PCA 3 |
---|
3 parameters | 0.4824018 | 0.32759113 | 0.19000707 |
3 parameters ent | 0.42582802 | 0.29568193 | 0.27849004 |
6 parameters | 0.22421832 | 0.19958267 | 0.19614923 |
6 parameters ent | 0.27777425 | 0.20329209 | 0.18833349 |
9 parameters | 0.1681149 | 0.14530348 | 0.13463924 |
9 parameters ent | 0.17743445 | 0.1615457 | 0.14796169 |
The graphs for the
and
parameter models in the 10n cyclic max-cut problem are presented in
Figure A3. For the first
non-entangled model (red), the distribution is similar to that of the first cyclic problem, while the entangled model (blue) has a quite different data projection with no recognizable pattern. In the
parameter models, the behavior has some similarities with the previous cyclic problem. The non-entangled model (green) has a random distribution of points with no distinguishable cluster or pattern, but in the entangled model (purple) in the PCA 1 vs. PCA 2 graph, there is one major cluster in the center with two smaller ones at the sides, which is similar to the distribution in the previous problem, where the rest of the PCA 1 vs. PCA 3 and PCA 2 vs. PCA 3 graphs (in the purple model) also seem to be conglomerating the points at the center of each graph.
Figure A3.
PCA individual graphs for 10n cyclic configuration max-cut problem solved using QAOA, first 3 components. Red corresponds to the parameter non-entangled, blue parameter entangled, green parameter non-entangled, and purple parameter entangled model.
Figure A3.
PCA individual graphs for 10n cyclic configuration max-cut problem solved using QAOA, first 3 components. Red corresponds to the parameter non-entangled, blue parameter entangled, green parameter non-entangled, and purple parameter entangled model.
In the last
depth model with
parameters (
Figure A4, the distribution for the non-entangled model (orange) is very similar to the
non-entangled model, with a random distribution of points and no distinguishable clusters. For the entangled model, only the PCA 1 vs. PCA 2 graph seems to have a pattern, with two light clusters divided by a central line.
Figure A4.
PCA individual graphs for 10n cyclic configuration max-cut problem solved using QAOA, first 3 components. Orange parameter non-entangled and purple parameter entangled model.
Figure A4.
PCA individual graphs for 10n cyclic configuration max-cut problem solved using QAOA, first 3 components. Orange parameter non-entangled and purple parameter entangled model.
The pair PCA explained variances for the 10n cyclic max-cut problem are presented in
Table A3. The variances for the
and
models were very similar to the previous results, with a considerable decrease in the amount of variance represented in each PCA component as the number of parameters increased. This trend persists with the
pair PCA model values.
Table A4.
Pair PCA projections explained variance for the first 3 PCA components for the 10n cyclic max-cut problem.
Table A4.
Pair PCA projections explained variance for the first 3 PCA components for the 10n cyclic max-cut problem.
Parameters | PCA 1 | PCA 2 | PCA 3 |
---|
3 parameters | 0.45436643 | 0.31238244 | 0.23325113 |
6 parameters | 0.21821814 | 0.1962479 | 0.17828477 |
9 parameters | 0.14672728 | 0.13850982 | 0.12026834 |
The pair PCA graphs are presented in
Figure A5. The
and
models have similar behaviors to the previous cyclic problem. The
model preserves almost the same distribution of points in the projection as the individual graphs, while, for the
models, the green (non-entangled) model has a random distribution of points similar to the individual graph. However, the purple (
entangled) model exhibits a clear cluster pattern behavior for the PCA 1 vs. PCA 2 and PCA 1 vs. PCA 3 graphs. In the more complex models with
, there is no clear behavior of the projection distribution, and due to the low variance for each PCA component presented in the graph, we cannot establish a precise interpretation of the results because the PCA mapping has lost a large amount of original information.
Figure A5.
PCA pair graphs for 10n cyclic configuration max-cut problem solved using QAOA, first 3 components. Red corresponds to the parameter non-entangled, blue parameter entangled, green parameter non-entangled, purple parameter entangled model, orange parameter non-entangled, and brown parameter entangled model.
Figure A5.
PCA pair graphs for 10n cyclic configuration max-cut problem solved using QAOA, first 3 components. Red corresponds to the parameter non-entangled, blue parameter entangled, green parameter non-entangled, purple parameter entangled model, orange parameter non-entangled, and brown parameter entangled model.
The explained variances for the first three PCA components in the individual models for the 10n complete problem are presented in
Table A5. Comparing the table with the individual variances for the cyclic problem, we observe some interesting results. Starting with the
model, the entangled version shows an increase in the amount of variance associated with PCA 1 and PCA 2 compared to the non-entangled model, which is the opposite of what was observed in the cyclic problem. For the
and
models, the entangled versions show a decrease in the amount of variance contained in PCA 1 and PCA 2 components with respect to the non-entangled models, while PCA 3 has a greater value in general. Analyzing these results with the cyclic problem, we can observe how the problem’s structure modifies how the entanglement stage in the mixing operator can affect the variance distribution along the PCA components. However, the difference between the components in the entangled models seems to be lower compared to the non-entangled ones. Another important observation is that, in the
and
models, the total amount of variance captured by the first three PCA components is slightly higher in the entangled models compared to the non-entangled ones.
Table A5.
Individual PCA projections explained variance (10n complete) for the first 3 PCA components.
Table A5.
Individual PCA projections explained variance (10n complete) for the first 3 PCA components.
Parameters | PCA 1 | PCA 2 | PCA 3 |
---|
3 parameters | 0.49767238 | 0.33234628 | 0.16998134 |
3 parameters ent | 0.588512290 | 0.411087639 | 0.0004000709 |
6 parameters | 0.24720666 | 0.19582826 | 0.16085243 |
6 parameters ent | 0.23681691 | 0.19549636 | 0.17376718 |
9 parameters | 0.17181209 | 0.14208608 | 0.12933972 |
9 parameters ent | 0.15950657 | 0.14702026 | 0.14211113 |
The individual graphs presented in
Figure A6 exhibit a behavior similar to that of the 4n complete max-cut problem. The
non-entangled (red) and entangled (blue) models have almost the same type of distribution for the PCA 1 vs. PCA 2, albeit with different orientations. In the case of the
non-entangled model (green), it has a similar random distribution as in the previous problems (not only the complete problems). Meanwhile, the
entangled model (purple) has a major cluster on the left and two small clusters on the right in the PCA 1 vs. PCA 2 graph, and, the PCA 2 vs. PCA 3 graph has a two-cluster distribution.
Figure A6.
PCA individual graphs for 10n complete configuration max-cut problem solved using QAOA, first 3 components. Red corresponds to the parameter non-entangled, blue parameter entangled, green parameter non-entangled, and purple parameter entangled model.
Figure A6.
PCA individual graphs for 10n complete configuration max-cut problem solved using QAOA, first 3 components. Red corresponds to the parameter non-entangled, blue parameter entangled, green parameter non-entangled, and purple parameter entangled model.
Completing the individual graphs in the 10n complete max-cut problems, we have the
parameter models (
depth) in
Figure A7. In this case, there is no clear behavior in the non-entangled and entangled models. This is not surprising because the amount of variance that each perspective has is very low, and it cannot give a correct representation of the original information.
Figure A7.
PCA individual graphs for 10n complete configuration max-cut problem solved using QAOA, first 3 components. Orange parameter non-entangled and brown parameter entangled model.
Figure A7.
PCA individual graphs for 10n complete configuration max-cut problem solved using QAOA, first 3 components. Orange parameter non-entangled and brown parameter entangled model.
The explained variances for the 10n complete max-cut problem are presented in
Table A5. The values of variance are very similar to the ones obtained in the cyclic problem, showing a decreasing trend in importance (due to the decrease in variance) with an increase in the number of parameters. In the case of the
models, the amount of variance in the first three components is less than
.
Table A6.
Pair PCA projections explained variance for the first 3 PCA components for the 10n complete max-cut problem.
Table A6.
Pair PCA projections explained variance for the first 3 PCA components for the 10n complete max-cut problem.
Parameters | PCA 1 | PCA 2 | PCA 3 |
---|
3 parameters | 0.46514143 | 0.34410486 | 0.19075371 |
6 parameters | 0.20148807 | 0.19106115 | 0.17569887 |
9 parameters | 0.1569094 | 0.137659 | 0.12379254 |
The pair PCA model for the 10n complete max-cut problem is presented in
Figure A8. In the case of the
models, the distribution is very similar to the individual graphs, with changes observed in the PCA 1 vs. PCA 3 and PCA 2 vs. PCA 3 distributions for the entangled model (blue). For the
parameter models, the distribution shows no clear pattern or clusters, with only two light clusters and some outliers in the PCA 1 vs. PCA 2 plot. However, due to the low variance of the PCA components, these results cannot be considered conclusive. Finally, for the
models, the distribution appears to be random, with no clear patterns observed. Again, due to the low variance, these results are to be expected.
Figure A8.
PCA pair graphs for 10n complete configuration max-cut problem solved using QAOA, first 3 components. Red corresponds to the parameter non-entangled, blue parameter entangled, green parameter non-entangled, purple parameter entangled model, orange parameter non-entangled, and brown parameter entangled model.
Figure A8.
PCA pair graphs for 10n complete configuration max-cut problem solved using QAOA, first 3 components. Red corresponds to the parameter non-entangled, blue parameter entangled, green parameter non-entangled, purple parameter entangled model, orange parameter non-entangled, and brown parameter entangled model.
The results shown in
Table A7 exhibit similar behavior to those observed in the 10n cyclic problem. For the
models, the non-entangled model demonstrates greater values for PCA 1 and PCA 2, whereas the entangled model produces a more evenly distributed variance in PCA 2 and PCA 3. For the
models, the entangled model displays higher variance values for PCA 1 and PCA 2, as well as for the first three components, which is consistent with the earlier findings. In the case of the
models, the entangled model has higher values for all PCA components, although the difference is not substantial. Overall, these results suggest that the entangled models generally perform better in terms of the amount of variance information that the model is able to detect and project in the new PCA space.
Table A7.
Individual PCA projections explained variance (15n cyclic) for the first 3 PCA components.
Table A7.
Individual PCA projections explained variance (15n cyclic) for the first 3 PCA components.
Parameters | PCA 1 | PCA 2 | PCA 3 |
---|
3 parameters | 0.4647624 | 0.32860527 | 0.20663233 |
3 parameters ent | 0.38826281 | 0.34828084 | 0.26345635 |
6 parameters | 0.22713273 | 0.19519285 | 0.18337327 |
6 parameters ent | 0.27183177 | 0.23569836 | 0.19037519 |
9 parameters | 0.1592166 | 0.1491276 | 0.14043665 |
9 parameters ent | 0.17716564 | 0.15707367 | 0.13968417 |
For the individual PCA graphs of the 15n cyclic max-cut problem, refer to
Figure A9. In the
models, both non-entangled (red) and entangled (blue), we observe a behavior similar to previous experiments. Particularly, interesting patterns can be observed in the PCA 1 vs. PCA 2 and PCA 2 vs. PCA 3 planes. Shifting our focus to the
models, the non-entangled model (green) exhibits patterns consistent with previous observations, with no clear discernible behavior or pattern across different PCA planes. However, for the entangled model (purple), the presence of the three-line clustering behavior, previously observed in the PCA 1 vs. PCA 2 plane for the 4n and 10n cyclic problems, reappears.
Figure A9.
PCA individual graphs for 15n cyclic configuration max-cut problem solved using QAOA, first 3 components. Red corresponds to the parameter non-entangled, blue parameter entangled, green parameter non-entangled, and purple parameter entangled model.
Figure A9.
PCA individual graphs for 15n cyclic configuration max-cut problem solved using QAOA, first 3 components. Red corresponds to the parameter non-entangled, blue parameter entangled, green parameter non-entangled, and purple parameter entangled model.
In the
parameters models (
Figure A10), no clear patterns can be distinguished in both the non-entangled (yellow) and entangled (brown) models. This lack of clear patterns is not surprising considering the low variance associated with the first three PCA components. As previously mentioned, when the variance is low, it becomes more challenging to achieve a meaningful mapping in the low-dimensional space using PCA.
Figure A10.
PCA individual graphs for 15n cyclic configuration max-cut problem solved using QAOA, first 3 components. Orange parameter non-entangled and brown parameter entangled model.
Figure A10.
PCA individual graphs for 15n cyclic configuration max-cut problem solved using QAOA, first 3 components. Orange parameter non-entangled and brown parameter entangled model.
Now, regarding the pair PCA models in the 15n cyclic problem, we observe similar behavior as in the previous cyclic problem. The models present the best PCA values, which is not surprising since this model has the same dimension as the PCA components. The models accumulate approximately 60% of the variance in the original data for the first three PCA components, making them the second-best performing models. Finally, the models have lower PCA values, with less than 40% of the variance of the data in the first three components.
Table A8.
Pair PCA projections explained variance for the first 3 PCA components for the 15n cyclic max-cut problem.
Table A8.
Pair PCA projections explained variance for the first 3 PCA components for the 15n cyclic max-cut problem.
Parameters | PCA 1 | PCA 2 | PCA 3 |
---|
3 parameters | 0.41927731 | 0.34498266 | 0.23574004 |
6 parameters | 0.23265555 | 0.18633541 | 0.18280923 |
9 parameters | 0.15291139 | 0.14312175 | 0.12984339 |
The results presented in
Figure A11 exhibit similar patterns to those observed in previous problems for the
and
models. In particular, for the
models, both the entangled (purple) and non-entangled (green) models continue to exhibit their respective distribution behaviors. The non-entangled model displays a scattered distribution in the PCA 1 vs. PCA 2 plane, while the entangled model demonstrates clustering behavior in the PCA 1 vs. PCA 3 plane. However, for the
models, neither the entangled (brown) nor the non-entangled (yellow) models exhibit clear patterns. The only noticeable difference is that the data points in the entangled model tend to be closer together, although this distinction is difficult to discern.
Figure A11.
PCA pair graphs for 15n cyclic configuration max-cut problem solved using QAOA, first 3 components. Red corresponds to the parameter non-entangled, blue parameter entangled, green parameter non-entangled, purple parameter entangled model, orange parameter non-entangled, and brown parameter entangled model.
Figure A11.
PCA pair graphs for 15n cyclic configuration max-cut problem solved using QAOA, first 3 components. Red corresponds to the parameter non-entangled, blue parameter entangled, green parameter non-entangled, purple parameter entangled model, orange parameter non-entangled, and brown parameter entangled model.
The final problem examined using PCA is the 15n complete configuration max-cut problem. The individual PCA variances are presented in
Table A9. In the
models (both entangled and non-entangled), the behavior aligns with the previous findings. However, in the
models, the distribution of explained variance differs from the 10n complete configuration problem. Here, the entangled model demonstrates a noticeable increase in variance due to the presence of the entanglement stage, resembling the behavior observed in the cyclic problems. Similarly, in the
models, the entangled QAOA exhibits a higher total amount of variance in the first 3 PCA components, mirroring the results observed in the
models. Additionally, consistent with the 10n problem, the total amount of variance is higher in the entangled models for both the
and
cases.
Table A9.
Individual PCA projections explained variance (15n complete) for the first 3 PCA components.
Table A9.
Individual PCA projections explained variance (15n complete) for the first 3 PCA components.
Parameters | PCA 1 | PCA 2 | PCA 3 |
---|
3 parameters | 0.41775729 | 0.35261959 | 0.22962311 |
3 parameters ent | 0.38723863 | 0.36655932 | 0.24620205 |
6 parameters | 0.22555648 | 0.19689321 | 0.18005628 |
6 parameters ent | 0.28402724 | 0.21446195 | 0.18652736 |
9 parameters | 0.16446156 | 0.15145779 | 0.14506611 |
9 parameters ent | 0.18999579 | 0.16075822 | 0.13010846 |
The individual graphs using PCA for the 15n complete max-cut problem are presented in
Figure A12. In the
models, both the entangled (blue) and non-entangled (red) models exhibit patterns similar to those observed in the previous 4n and 10n problems. However, there are some differences in the entangled model, particularly in the PCA 1 vs. PCA 2 and PCA 1 vs. PCA 3 planes, where more line patterns are observed compared to the one or two line patterns seen in the previous problems. Moving on to the
models, the non-entangled model (green) continues the trend observed in previous problems, showing no clear tendency or discernible behavior in the data distribution. In contrast, the entangled model (purple) exhibits no clear distribution in the PCA 1 vs. PCA 2 plane, which is different from the patterns observed in the 4n and 10n problems. The PCA 1 vs. PCA 3 plane shows some noisy cluster distribution, but it is not well-defined.
Figure A12.
PCA individual graphs for 15n complete configuration max-cut problem solved using QAOA, first 3 components. Red corresponds to the parameter non-entangled, blue parameter entangled, green parameter non-entangled, and purple parameter entangled model.
Figure A12.
PCA individual graphs for 15n complete configuration max-cut problem solved using QAOA, first 3 components. Red corresponds to the parameter non-entangled, blue parameter entangled, green parameter non-entangled, and purple parameter entangled model.
In the
models depicted in
Figure A13, no clear or distinguishable patterns can be observed in both the non-entangled (yellow) and entangled (brown) models. This behavior is consistent with the patterns observed in the 10n complete max-cut problem.
Figure A13.
PCA individual graphs for 15n complete configuration max-cut problem solved using QAOA, first 3 components. Orange parameter non-entangled and brown parameter entangled model.
Figure A13.
PCA individual graphs for 15n complete configuration max-cut problem solved using QAOA, first 3 components. Orange parameter non-entangled and brown parameter entangled model.
The explained variance for the 15n complete max-cut problem is presented in
Table A10. The distribution of PCA variance per model follows a similar trend to that observed in the previous problems. The
models exhibit the highest variance values, which is expected as the number of parameters matches the number of PCA components. As the number of parameters increases, the quality of the components decreases, resulting in lower variance values. Notably, the
models show a slight increase in the total amount of variance compared to the 10n problem, bringing them closer to the values obtained in the cyclic problems. The variance values for the
models are similar to those observed in the 10n problems, both for cyclic and complete configurations, representing the lowest values among the tested models.
Table A10.
Pair PCA projections explained variance for the first 3 PCA components for the 15n complete max-cut problem.
Table A10.
Pair PCA projections explained variance for the first 3 PCA components for the 15n complete max-cut problem.
Parameters | PCA 1 | PCA 2 | PCA 3 |
---|
3 parameters | 0.36035505 | 0.35400924 | 0.28563571 |
6 parameters | 0.24550126 | 0.19657842 | 0.16664964 |
9 parameters | 0.1512382 | 0.13967618 | 0.12791876 |
The pair PCA graphs for the 15n complete max-cut problem are presented in
Figure A14. In the
models, both non-entangled (red) and entangled (blue), the essence of the individual graphs is preserved, similar to the previous pair graphs. However, the
models do not exhibit a clear behavior or pattern in any of the planes. This behavior is consistent with the 15n cyclic problem but differs from the distribution observed in the 4n and 10n complete problems, where some clustering patterns were observed. Lastly, in the
models, the non-entangled model (yellow) displays a random distribution pattern across all planes, while the entangled model (brown) shows a slightly more concentrated patterns in certain areas, as seen in the PCA 1 vs. PCA 2 and PCA 1 vs. PCA 3 planes.
Figure A14.
PCA pair graphs for 15n complete configuration max-cut problem solved using QAOA, first 3 components. Red corresponds to the parameter non-entangled, blue parameter entangled, green parameter non-entangled, purple parameter entangled model, orange parameter non-entangled, and brown parameter entangled model.
Figure A14.
PCA pair graphs for 15n complete configuration max-cut problem solved using QAOA, first 3 components. Red corresponds to the parameter non-entangled, blue parameter entangled, green parameter non-entangled, purple parameter entangled model, orange parameter non-entangled, and brown parameter entangled model.
Appendix B. t-SNE Graphs and KL Divergence Values
In this appendix, we present the complementary results for the experiments developed using t-SNE analysis (and KL-D values obtained) applied in the max-cut problems solved using the QAOA.
The results for KL-D for individual t-SNE in the 4n complete max-cut problem are presented in
Table A11. In general, the values for 3 and 30 perplexity have values that are closer compared to the cyclic 4n problem, with the entangled models having a better perplexity value (lower) compared to the non-entangled models. The best KL-D values were obtained with the 99 perplexity, which is interpreted as the best model that represents the original properties of the data.
Table A11.
Individual KL-Divergence for 4n complete max-cut problem with different numbers of perplexity, considering the non-entangled, entangled, non-entangled, and entangled models.
Table A11.
Individual KL-Divergence for 4n complete max-cut problem with different numbers of perplexity, considering the non-entangled, entangled, non-entangled, and entangled models.
Parameters | KL-D (3 per) | KL-D (30 per) | KL-D (99 per) |
---|
3 parameters | 0.15324634 | 0.17391348 | 0.00002262 |
3 parameters ent | 0.14360289 | 0.05689293 | 0.00003242 |
6 parameters | 0.55960602 | 0.52287281 | 0.00004825 |
6 parameters ent | 0.37428555 | 0.38009176 | 0.00002795 |
The individual graphs for the 4n complete max-cut problem (
Figure A15) show that the
non-entangled (red) model has a distribution similar to the previous problem, and, specifically for the 99 perplexity, the three-line pattern is similar to the one obtained before. The pattern in this perplexity value is also similar to some perspectives obtained in the PCA graphs. The
entangled (blue) model has very different patterns than the ones obtained in the cyclic problem. The most interesting results are the similarities of the two-line clusterization obtained at the 30 and 99 perplexity, which replicate some patterns from PCA graphs obtained in the same problem. Moving to the
models, the non-entangled (green) model has a random distribution behavior observed in the cyclic problem and the PCA graphs at the 30 perplexity. At the 99 perplexity, the elliptical pattern of the cyclic problem is observed again, but with a wider edge compared to the cyclic t-SNE graph. Last, for the
entangled (purple) model, the 99 perplexity shows a particular pattern with two small elongated clusters at the extremes of the graph and two small clusters at the center of the plane with some outlier points trying to connect both small clusters.
Figure A15.
t-SNE individual graphs for 4n complete configuration max-cut problem solved using QAOA, with different perplexity values 3, 30, and 99. Red corresponds to the parameter non-entangled, blue parameter entangled, green parameter non-entangled, and purple parameter entangled model.
Figure A15.
t-SNE individual graphs for 4n complete configuration max-cut problem solved using QAOA, with different perplexity values 3, 30, and 99. Red corresponds to the parameter non-entangled, blue parameter entangled, green parameter non-entangled, and purple parameter entangled model.
The KL-D results for the pair t-SNE models in the 4n complete max-cut problem are presented in
Table A12. The results from 3 to 99 perplexity are quite similar to those obtained in the cyclic problem, where the
model shows better KL-D results, leading to a better representation of the data in the final plane. However, in the case of the 199 perplexity, the
parameter models exhibit better KL-D values, which is a different result compared to the cyclic problem.
Table A12.
Pair KL-Divergence for 4n complete max-cut problem with different numbers of perplexity, considering the parameters (non-entangled and entangled) and parameters (non-entangled and entangled) models.
Table A12.
Pair KL-Divergence for 4n complete max-cut problem with different numbers of perplexity, considering the parameters (non-entangled and entangled) and parameters (non-entangled and entangled) models.
| KL-Divergence |
---|
Parameters | 3 per | 30 per | 99 per | 199 per |
3 parameters | 0.17788552 | 0.22446597 | 0.11483472 | 0.00005328 |
6 parameters | 0.58645886 | 0.77581 | 0.36295095 | 0.00005059 |
In the pair graphs for the 4n complete configuration (
Figure A16), we can observe interesting behavior patterns starting with the
models. The entangled model (blue) shows a similar pattern in all perplexity values, which can be observed more clearly from the 30 to 199 perplexity range. The blue model distributes itself over particular areas on the t-SNE mapped plane, but with a smooth distribution of mapped points. For the
models, the most interesting distribution is observed at a 199 perplexity value. Here, the mapped data distribution is very similar to the one obtained in the cyclic problem. However, in this case, there are only a few points that cross the middle of the elliptic pattern.
Figure A16.
t-SNE pair graphs for 4n pair complete configuration max-cut problem solved using QAOA, with different perplexity values 3, 30, 99, and 199. Red corresponds to the parameter non-entangled, blue parameter entangled, green parameter non-entangled, and purple parameter entangled model.
Figure A16.
t-SNE pair graphs for 4n pair complete configuration max-cut problem solved using QAOA, with different perplexity values 3, 30, 99, and 199. Red corresponds to the parameter non-entangled, blue parameter entangled, green parameter non-entangled, and purple parameter entangled model.
Table A13.
Individual KL-Divergence for 10n cyclic max-cut problem with different perplexity values, considering the non-entangled, entangled, non-entangled, entangled, non-entangled, and entangled models.
Table A13.
Individual KL-Divergence for 10n cyclic max-cut problem with different perplexity values, considering the non-entangled, entangled, non-entangled, entangled, non-entangled, and entangled models.
Parameters | KL-D (3 per) | KL-D (30 per) | KL-D (99 per) |
---|
3 parameters | 0.11449474 | 0.18797217 | 0.00002232 |
3 parameters ent | 0.08714075 | 0.17103997 | 0.00004818 |
6 parameters | 0.61964202 | 0.53861362 | 0.00004456 |
6 parameters ent | 0.33782312 | 0.40035829 | 0.0000446 |
9 parameters | 0.6599322 | 0.60457009 | 0.00003925 |
9 parameters ent | 0.690759 | 0.54887885 | 0.00004668 |
When analyzing the 10n max-cut problem with cyclic configuration using t-SNE, we observed that the entangled model performed the best in terms of KL-D value for the 3 perplexity. However, as the number of parameters increased, the quality of the projected model decreased, but, on average, entangled models produced better results than non-entangled ones. For the 30 perplexity, the entangled model remained the best, and all the entangled models had better KL-D results. At the 99 perplexity, the non-entangled model had the best KL-D value, but every model at this perplexity level showed a good KL-D value, which enabled a good representation of the data in the t-SNE plane.
The graphs for the 10n cyclic max-cut problem are presented in
Figure A17. The patterns observed in the
models, both entangled (blue) and non-entangled (red), are pretty similar to the ones observed in the 4n problem. For the
non-entangled model (green), the distribution of data is similar to the one obtained in the 4n problem. However, for the entangled model (purple) at 99 perplexity, the elliptic behavior is no longer distinguishable. In this case, the green and purple models at 99 perplexity have a similar distribution of points.
Figure A17.
t-SNE individual graphs for 10n cyclic configuration max-cut problem solved using QAOA, with different perplexity values 3, 30, and 99. Red corresponds to the parameter non-entangled, blue parameter entangled, green parameter non-entangled, and purple parameter entangled model.
Figure A17.
t-SNE individual graphs for 10n cyclic configuration max-cut problem solved using QAOA, with different perplexity values 3, 30, and 99. Red corresponds to the parameter non-entangled, blue parameter entangled, green parameter non-entangled, and purple parameter entangled model.
In
Figure A18, at 99 perplexity, the
non-entangled model (orange) exhibits a similar elliptic pattern as the
non-entangled model, while the entangled model (brown) displays a more defined elliptic pattern.
Figure A18.
t-SNE individual graphs for 10n cyclic configuration max-cut problem solved using QAOA, with different perplexity values 3, 30, and 99. Orange corresponds to the parameter non-entangled and brown parameter entangled.
Figure A18.
t-SNE individual graphs for 10n cyclic configuration max-cut problem solved using QAOA, with different perplexity values 3, 30, and 99. Orange corresponds to the parameter non-entangled and brown parameter entangled.
Table A14 presents the pair KL-D divergences for different depth QAOA models. For the first three perplexity values (3, 30, and 99), the best KL-D values were obtained by the
models. At 30 perplexity, it is interesting to see a value greater than 1 obtained by the
models, which is the highest (lower quality) value obtained so far. Finally, at 199 perplexity, the best KL-D values for each t-SNE model were obtained, with the best KL-D value corresponding to the
models.
Table A14.
Pair KL-Divergence for 10n cyclic max-cut problem with different perplexity values, considering the parameters (non-entangled and entangled), parameters (non-entangled and entangled), and parameters (non-entangled and entangled) models.
Table A14.
Pair KL-Divergence for 10n cyclic max-cut problem with different perplexity values, considering the parameters (non-entangled and entangled), parameters (non-entangled and entangled), and parameters (non-entangled and entangled) models.
| KL-Divergence |
---|
Parameters | 3 per | 30 per | 99 per | 199 per |
3 parameters | 0.12718032 | 0.22481607 | 0.1436608 | 0.00006457 |
6 parameters | 0.61863911 | 0.73845208 | 0.37629709 | 0.0000484 |
9 parameters | 0.80385178 | 1.04350173 | 0.423794 | 0.00004115 |
The pair t-SNE model graphs for the 10n cyclic max-cut problem can be seen in
Figure A19. At the 3 perplexity, the non-entangled models (red, green, and orange) seem to be distributed in specific patterns in the plane, while the entangled models (blue, purple, and brown) match in certain areas of the t-SNE plane. Moving on to the 30 perplexity, the
models (red non-entangled and blue entangled) distribute in very particular patterns that cannot be interpreted as a specific structure. In the
models, the green (non-entangled) model seems to have a smooth random distribution, while the purple (entangled) model is concentrated in certain areas of the plane. The
model follows a similar behavior as the
graph, where the orange (non-entangled) model is almost randomly distributed, and the brown (entangled) model is more concentrated. For the 99 perplexity, the
graph has a similar pattern to the one observed in the 4n cyclic problem, where the red and blue models have fewer matches compared to the previous perplexity values. In the
graph, the behavior is similar to the one observed at the 30 perplexity, where the green (non-entangled) model is scattered in the t-SNE plane and the purple (entangled) model is more concentrated in certain areas. For the
graph, there is a difference between the orange (non-entangled) and brown (entangled) models, where the orange model maintains the scattered distribution and the brown model has three areas where most of the points are plotted. Finally, at the 199 perplexity, the
graph has a distribution that forms a rotated square with no additional specific behavior. The
graph has a completely different distribution from the ones observed in previous graphs, even in different problems. The scale of the graph is very small, generating the presence of outliers and a particular cluster containing both entangled (purple) and non-entangled (green) models. In the
graph, both orange (non-entangled) and brown (entangled) models have an elliptic pattern, where the orange model is more scattered compared to the brown model, which preserves the elliptic pattern better.
The KL-Divergence values presented in
Table A15 show similar results to those observed in the 10n cyclic problem, where most of the entangled models present a better KL-Divergence value after optimization, resulting in a better mapping of points in the t-SNE plane.
Figure A19.
t-SNE pair graphs for 10n cyclic configuration max-cut problem solved using QAOA, with different perplexity values 3, 30, 99, and 199. Red corresponds to the parameter non-entangled, blue parameter entangled, green parameter non-entangled, purple parameter entangled, orange parameter non-entangled, and brown parameter entangled model.
Figure A19.
t-SNE pair graphs for 10n cyclic configuration max-cut problem solved using QAOA, with different perplexity values 3, 30, 99, and 199. Red corresponds to the parameter non-entangled, blue parameter entangled, green parameter non-entangled, purple parameter entangled, orange parameter non-entangled, and brown parameter entangled model.
Table A15.
Individual KL-Divergence for 10n complete max-cut problem with different perplexity values, considering the non-entangled, entangled, non-entangled, entangled, non-entangled, and entangled models.
Table A15.
Individual KL-Divergence for 10n complete max-cut problem with different perplexity values, considering the non-entangled, entangled, non-entangled, entangled, non-entangled, and entangled models.
Parameters | KL-D (3 per) | KL-D (30 per) | KL-D (99 per) |
---|
3 parameters | 0.1108679 | 0.15153457 | 0.00001909 |
3 parameters ent | 0.13275136 | 0.05032415 | 0.00004749 |
6 parameters | 0.48524341 | 0.51412958 | 0.00005262 |
6 parameters ent | 0.41168147 | 0.42243937 | 0.00003066 |
9 parameters | 0.73269081 | 0.6897254 | 0.00004309 |
9 parameters ent | 0.87109852 | 0.63736594 | 0.00004298 |
Figure A20 displays the individual t-SNE graphs for the 10n complete configuration max-cut problem. For the
models, the red (non-entangled) and blue (entangled) models at 3 perplexity do not exhibit a clear pattern, consistent with previous results. At 30 perplexity, the entangled model generates a line with an empty space in the middle, and the non-entangled model continues without a clear pattern. At 99 perplexity, the non-entangled (red) model presents a pattern similar to the one seen in the 4n problem with a complete configuration, as well as a similar pattern to the one obtained in the individual PCA graphs (PCA 1 vs. PCA 2) for the 4n and 10n problems with a similar configuration. The entangled model (blue) at 99 perplexity presents a two-line pattern, similar to the one obtained in the previous 4n problem and the individual PCA graphs (PCA 1 vs. PCA 2) for the 4n and 10n complete configuration problems. For the
models, at 3 and 30 perplexity, there is no clear pattern, consistent with previous results. However, at 99 perplexity, the non-entangled (green) model appears to be distributed in an elliptical pattern at the sides of the t-SNE plane, and the entangled (purple) model creates four clusters distributed at the sides of the plane. This last result shares some similarities with the 4n complete configuration problem.
Figure A20.
t-SNE individual graphs for 10n complete configuration max-cut problem solved using QAOA, with different perplexity values 3, 30, and 99. Red corresponds to the parameter non-entangled, blue parameter entangled, green parameter non-entangled, and purple parameter entangled model.
Figure A20.
t-SNE individual graphs for 10n complete configuration max-cut problem solved using QAOA, with different perplexity values 3, 30, and 99. Red corresponds to the parameter non-entangled, blue parameter entangled, green parameter non-entangled, and purple parameter entangled model.
Figure A21.
t-SNE individual graphs for 10n complete configuration max-cut problem solved using QAOA, with different perplexity values 3, 30, and 99. Orange corresponds to the parameter non-entangled and brown parameter entangled.
Figure A21.
t-SNE individual graphs for 10n complete configuration max-cut problem solved using QAOA, with different perplexity values 3, 30, and 99. Orange corresponds to the parameter non-entangled and brown parameter entangled.
The individual t-SNE graphs for the 10n complete configuration max-cut problem are shown in
Figure A7. At both 3 and 30 perplexity, there is no clear pattern observed, with the distribution appearing random with no apparent clusters. At 99 perplexity, there is also no distinguishable pattern observed, which is different from the elliptical behavior observed in the 10n cyclic problem but consistent with the individual PCA graphs obtained for the same problem.
The KL-Divergence values for the pair-wise t-SNE models are presented in
Table A16. The values are similar to those observed in the cyclic problem with 10n, where the worst KL-D values were obtained at 30 perplexity, particularly in the 9p parameter models, and the best KL-D values were obtained at 199 perplexity. The overall best performance was seen in the 9p models.
Table A16.
Pair KL-Divergence for 10n complete max-cut problem with different perplexity values, considering the parameters (non-entangled and entangled), parameters (non-entangled and entangled), and parameters (non-entangled and entangled) models.
Table A16.
Pair KL-Divergence for 10n complete max-cut problem with different perplexity values, considering the parameters (non-entangled and entangled), parameters (non-entangled and entangled), and parameters (non-entangled and entangled) models.
| KL-Divergence |
---|
Parameters | 3 per | 30 per | 99 per | 199 per |
3 parameters | 0.15265435 | 0.19996087 | 0.11178039 | 0.00005902 |
6 parameters | 0.56295419 | 0.78792441 | 0.38925377 | 0.00004848 |
9 parameters | 0.90329468 | 1.03177929 | 0.43718094 | 0.00004415 |
Figure A22.
t-SNE pair graphs for 10n complete configuration max-cut problem solved using QAOA, with different perplexity values 3, 30, 99, and 199. Red corresponds to the parameter non-entangled, blue parameter entangled, green parameter non-entangled, purple parameter entangled, orange parameter non-entangled, and brown parameter entangled model.
Figure A22.
t-SNE pair graphs for 10n complete configuration max-cut problem solved using QAOA, with different perplexity values 3, 30, 99, and 199. Red corresponds to the parameter non-entangled, blue parameter entangled, green parameter non-entangled, purple parameter entangled, orange parameter non-entangled, and brown parameter entangled model.
The pair graphs obtained for the 10n complete configuration problem can be seen in
Figure A8. For the
non-entangled (red) and entangled (blue) models, similar patterns are observed as in the individual t-SNE graphs, where the entangled model preserves a two-line clusterization and the non-entangled model generates different types of lines that can be observed from 99 to 199 perplexity. It is also important to mention that the distribution for the
models is very similar to the ones observed in the 4n complete configuration problem in PCA 1 vs. PCA 2 and the paired t-SNE graphs. For the
models, the most interesting behavior is presented at 199 perplexity, where the non-entangled (green) model has an elliptical pattern with some points at the center, and the entangled (purple) model has two definite areas where the points are plotted, which are two parts of the elliptical pattern. This pattern has many similarities with the 4n nodes problem at the same perplexity. For the
models, in general, the non-entangled model (orange) seems to be randomly distributed at different perplexities, while the entangled (brown) model tends to be more concentrated in certain areas of the t-SNE plane. At 199 perplexity, both models tend to generate an elliptical behavior, where the non-entangled model is better distributed around the ellipse, and the entangled model is more scattered; this pattern is similar to the one observed in the
models for the 10n cyclic problem.
The KL-Divergence values presented in
Table A17 correspond to the 15n cyclic problem. At a perplexity of 3, the entangled approaches consistently produced better KL values across all models, with the best KL value obtained in the
entangled model. At a perplexity of 30, the trend of entangled models performing better in terms of KL values continues for the more complex models with
and
(
and
depths, respectively). At a perplexity of 99, all models exhibit good KL values, which are closer to zero. When comparing these results with those reported in the 10n cyclic problem, we observe a consistent trend where entangled models generally yield better KL-Divergence values for different perplexities. Additionally, the best KL values for mapping are obtained at a perplexity of 99.
Table A17.
Individual KL-Divergence for 15n cyclic max-cut problem with different perplexity values, considering the non-entangled, entangled, non-entangled, entangled, non-entangled, and entangled models.
Table A17.
Individual KL-Divergence for 15n cyclic max-cut problem with different perplexity values, considering the non-entangled, entangled, non-entangled, entangled, non-entangled, and entangled models.
Parameters | KL-D (3 per) | KL-D (30 per) | KL-D (99 per) |
---|
3 parameters | 0.12295903 | 0.19203556 | 0.0000241 |
3 parameters ent | 0.10832428 | 0.24514797 | 0.0000398 |
6 parameters | 0.63913888 | 0.5105567 | 0.00004167 |
6 parameters ent | 0.3930757 | 0.45114037 | 0.00003364 |
9 parameters | 0.71460283 | 0.66517001 | 0.00004309 |
9 parameters ent | 0.64783859 | 0.55502474 | 0.00004505 |
In the t-SNE individual graphs for the 15n cyclic max-cut problem (
Figure A23), we observe similar behaviors as in the previous 4n and 10n cyclic problems. For the
models, both the non-entangled (red) and entangled (blue) models exhibit different patterns at different perplexities, and at a perplexity of 99, the non-entangled model generates the line pattern observed in previous t-SNE and PCA graphs. In the case of the
models, both the non-entangled (green) and entangled (purple) models show distributions that are consistent with previous problems. The non-entangled model generates an elliptic pattern with some points in the middle, while the entangled model exhibits a similar external pattern but with a more pronounced line in the middle.
The patterns observed in the
models at 3 and 30 perplexity (
Figure A24) closely resemble those observed in the 10n cyclic and complete configuration problems. At 99 perplexity, the distribution of the non-entangled model (orange) is consistent with the previous problems, while the distribution of the entangled model (brown) follows a similar trend but with additional noise. The general pattern can still be perceived, but it is not as clear as in the previous cyclic problem.
For the paired t-SNE models of the 15n cyclic max-cut problem presented in
Table A18, the observed values are similar to those of the 10n cyclic problem. At 3 perplexity, the best KL value corresponds to the paired 3p model, and as the number of parameters increases, the quality of KL-Divergence values decreases. At 30 perplexity, the best value is again obtained by the 3p models, but overall, this perplexity level yields the worst KL values. The trend of the KL quality decreasing with an increasing number of parameters persists. At 99 perplexity, the values for the 6p and 9p models are improved compared to the previous perplexities, but the 3p models remain the best performers. Finally, at 199 perplexity, the overall best KL values are reported, with all models exhibiting good KL-Divergence values, indicating a well-mapped low-dimensional space where the 6p models yield the best KL value in this case.
Figure A23.
t-SNE individual graphs for 15n cyclic configuration max-cut problem solved using QAOA, with different perplexity values 3, 30, and 99. Red corresponds to the parameter non-entangled, blue parameter entangled, green parameter non-entangled, and purple parameter entangled model.
Figure A23.
t-SNE individual graphs for 15n cyclic configuration max-cut problem solved using QAOA, with different perplexity values 3, 30, and 99. Red corresponds to the parameter non-entangled, blue parameter entangled, green parameter non-entangled, and purple parameter entangled model.
Figure A24.
t-SNE individual graphs for 15n cyclic configuration max-cut problem solved using QAOA, with different perplexity values 3, 30, and 99. Orange corresponds to the parameter non-entangled and brown parameter entangled.
Figure A24.
t-SNE individual graphs for 15n cyclic configuration max-cut problem solved using QAOA, with different perplexity values 3, 30, and 99. Orange corresponds to the parameter non-entangled and brown parameter entangled.
The graphical representation of the paired t-SNE models is presented in
Figure A25. Starting with the 3p models, both non-entangled (red) and entangled (blue) present similar behaviors as in the 10n cyclic case. From 3 to 99 perplexity values, the patterns of both models appear relatively similar, with each model tending to group more in certain areas. At 199 perplexity, the difference between models becomes more pronounced, where the non-entangled model exhibits a pattern with three lines, while the entangled model simulates a containment pattern of the non-entangled model. For the 6p models, the observed behaviors are also similar to those reported in the 10n cyclic problem. The non-entangled model (green) appears more scattered in the plane from 3 to 99 perplexity, while the entangled model (purple) tends to be more concentrated in certain areas. At 199 perplexity, the non-entangled and entangled models share a closer distribution, but the entangled model stands out due to the presence of three soft clusters. Finally, for the 9p models, the distributions are similar to the 6p models from 3 to 99 perplexity, where the non-entangled model (orange) shows a random distribution across most of the t-SNE plane, while the entangled model (brown) exhibits a higher concentration in certain areas. At 199 perplexity, both models generate an elliptical pattern, with the entangled model being more grouped in certain parts of the elliptical pattern.
Table A18.
Pair KL-Divergence for 15n cyclic max-cut problem with different perplexity values, considering the parameters (non-entangled and entangled), parameters (non-entangled and entangled), and parameters (non-entangled and entangled) models.
Table A18.
Pair KL-Divergence for 15n cyclic max-cut problem with different perplexity values, considering the parameters (non-entangled and entangled), parameters (non-entangled and entangled), and parameters (non-entangled and entangled) models.
| KL-Divergence |
---|
Parameters | 3 per | 30 per | 99 per | 199 per |
3 parameters | 0.13307488 | 0.26993424 | 0.17919816 | 0.00004499 |
6 parameters | 0.64315343 | 0.82122898 | 0.34502453 | 0.00004286 |
9 parameters | 0.8600843 | 1.03565741 | 0.42468697 | 0.00004554 |
Figure A25.
t-SNE pair graphs for 15n cyclic configuration max-cut problem solved using QAOA, with different perplexity values 3, 30, 99, and 199. Red corresponds to the parameter non-entangled, blue parameter entangled, green parameter non-entangled, purple parameter entangled, orange parameter non-entangled, and brown parameter entangled model.
Figure A25.
t-SNE pair graphs for 15n cyclic configuration max-cut problem solved using QAOA, with different perplexity values 3, 30, 99, and 199. Red corresponds to the parameter non-entangled, blue parameter entangled, green parameter non-entangled, purple parameter entangled, orange parameter non-entangled, and brown parameter entangled model.
The last individual t-SNE KL-Divergence values correspond to the 15n complete max-cut problem, and they are presented in
Table A19. At 3 perplexity, the entangled models for
and
present better KL values. However, for the
models, the non-entangled model has the best KL value overall, which differs from the values observed in the 10n complete problem where only the
entangled model was better than the non-entangled model. At 30 perplexity, all the entangled models show better values compared to their corresponding non-entangled models. This behavior is similar to what was observed in the 10n complete problem at the same perplexity. Finally, at 99 perplexity, all the models exhibit good KL-Divergence values, with the best value obtained by the
entangled model. Overall, the KL values for this problem demonstrate better results for the entangled models. They also share more similarities with the values observed in the 15n cyclic problem and, at certain perplexities, with the 10n complete problem.
Table A19.
Individual KL-Divergence for 15n complete max-cut problem with different perplexity values, considering the non-entangled, entangled, non-entangled, entangled, non-entangled, and entangled models.
Table A19.
Individual KL-Divergence for 15n complete max-cut problem with different perplexity values, considering the non-entangled, entangled, non-entangled, entangled, non-entangled, and entangled models.
Parameters | KL-D (3 per) | KL-D (30 per) | KL-D (99 per) |
---|
3 parameters | 0.09598967 | 0.21283571 | 0.00005414 |
3 parameters ent | 0.21084341 | 0.16879296 | 0.00003727 |
6 parameters | 0.62666488 | 0.56735194 | 0.00003864 |
6 parameters ent | 0.34622833 | 0.42480648 | 0.00004639 |
9 parameters | 0.82630664 | 0.66207534 | 0.00004564 |
9 parameters ent | 0.66798007 | 0.57983494 | 0.00004709 |
The graphs for the 15n complete max-cut problem can be viewed in
Figure A26. For the
models, non-entangled (red) and entangled (blue), at 3 perplexity, we observe similar patterns to those observed in previous problems. At 30 perplexity, the distribution is different from what was observed in the 10n complete problem, resembling the pattern observed in the 15n cyclic problem. At 99 perplexity, the non-entangled model exhibits a similar three-line pattern as in previous problems, but the entangled model shows a distribution with two separate areas from the middle, forming line patterns. For the
models, non-entangled (green) and entangled (purple), the behavior at 3 and 30 perplexity is similar to what was reported in the 10n complete and 15n cyclic problems. At 99 perplexity, the non-entangled model displays an elliptic pattern with some random points around it, while the entangled model generates a deformed elliptic pattern, resembling a butterfly-like distribution.
Figure A26.
t-SNE individual graphs for 15n complete configuration max-cut problem solved using QAOA, with different perplexity values 3, 30, and 99. Red corresponds to the parameter non-entangled, blue parameter entangled, green parameter non-entangled, and purple parameter entangled model.
Figure A26.
t-SNE individual graphs for 15n complete configuration max-cut problem solved using QAOA, with different perplexity values 3, 30, and 99. Red corresponds to the parameter non-entangled, blue parameter entangled, green parameter non-entangled, and purple parameter entangled model.
Finally, for the
models, the graphical results are presented in
Figure A27. At 3 and 30 perplexity, the patterns observed for the non-entangled (orange) and entangled (brown) models are similar to the ones observed in the 10n complete and 15n cyclic problems. At 99 perplexity, both the non-entangled and entangled models exhibit a tendency to concentrate more toward the sides of the t-SNE plane, creating a somewhat elliptical pattern that is not very distinct.
Figure A27.
t-SNE individual graphs for 15n complete configuration max-cut problem solved using QAOA, with different perplexity values 3, 30, and 99. Orange corresponds to the parameter non-entangled and brown parameter entangled.
Figure A27.
t-SNE individual graphs for 15n complete configuration max-cut problem solved using QAOA, with different perplexity values 3, 30, and 99. Orange corresponds to the parameter non-entangled and brown parameter entangled.
The KL-Divergence values for the paired t-SNE models in the 15n complete max-cut problem are presented in
Table A20. The values at 3, 30, and 99 perplexity exhibit similar behaviors to the 15n cyclic problem, where the best KL value was generated by the
models and the worst values were obtained at 30 perplexity for the
models specifically. Furthermore, at 199 perplexity, the best KL values were reported, with all the models generating good values and the best among them being the 9p models.
Table A20.
Pair KL-Divergence for 15n complete max-cut problem with different perplexity values, considering the parameters (non-entangled and entangled), parameters (non-entangled and entangled), and parameters (non-entangled and entangled) models.
Table A20.
Pair KL-Divergence for 15n complete max-cut problem with different perplexity values, considering the parameters (non-entangled and entangled), parameters (non-entangled and entangled), and parameters (non-entangled and entangled) models.
| KL-Divergence |
---|
Parameters | 3 per | 30 per | 99 per | 199 per |
3 parameters | 0.15160248 | 0.26059961 | 0.165535 | 0.00004839 |
6 parameters | 0.6180442 | 0.75135112 | 0.34869462 | 0.0000503 |
9 parameters | 0.943533 | 1.02061999 | 0.43895942 | 0.00003921 |
The paired t-SNE models for the 15n complete max-cut problem are presented in
Figure A28. In the
models, non-entangled (red) and entangled (blue), the behavior observed at different perplexities is very similar between them, with no clear distribution even at 199 perplexity. This result differs from the patterns observed in the 10n complete problem and the 15n cyclic problem. Moving on to the
models, the patterns observed in the non-entangled (green) and entangled (purple) models are consistent with the previous graphs. The non-entangled model tends to be randomly scattered across the plane, while the entangled model shows more grouping behavior at 3, 30, and 99 perplexities. Only at 199 perplexity do the models distribute themselves at the sides of the plane, with the entangled model being more concentrated in certain areas of the distribution. Finally, for the
models, at 3, 30, and 99 perplexities, the non-entangled (orange) and entangled (brown) models exhibit similar distributions to the
models. The non-entangled model is more scattered, while the entangled model generates small group patterns in certain areas of the plane. At 199 perplexity, both models exhibit some sort of elliptical pattern previously observed in other problems, with the non-entangled model showing a more pronounced elliptic shape and the entangled model following the pattern but with less smoothness.
Figure A28.
t-SNE pair graphs for 15n complete configuration max-cut problem solved using QAOA, with different perplexity values 3, 30, 99, and 199. Red corresponds to the parameter non-entangled, blue parameter entangled, green parameter non-entangled, purple parameter entangled, orange parameter non-entangled, and brown parameter entangled model.
Figure A28.
t-SNE pair graphs for 15n complete configuration max-cut problem solved using QAOA, with different perplexity values 3, 30, 99, and 199. Red corresponds to the parameter non-entangled, blue parameter entangled, green parameter non-entangled, purple parameter entangled, orange parameter non-entangled, and brown parameter entangled model.