A Ubiquitous Clinic Recommendation System Using the Modified Mixed-Binary Nonlinear Programming-Feedforward Neural Network Approach
Abstract
:1. Introduction
- (1)
- There are various types of nonlinear relationships—high-order polynomials, n-th roots, exponents, logarithms, etc. However, there is little information about the suitability of each nonlinear function;
- (2)
- The overall performance of a clinic has no actual value, making it difficult to apply supervised learning methods to learn from historical data.
- Choosing a suitable nonlinear function to fit the relationship between the attributes of a clinic and its overall performance;
- Improving the successful recommendation rate using a UCR system.
2. Previous Work
2.1. Clinic Selection and Recommendation
2.2. Ubiquitous Clinic Recommendation
- (1)
- This research uses a nonlinear function to fit the relationship between the attributes of a clinic and its overall performance, while past studies have usually used linear functions;
- (2)
- This research establishes a mechanism to simulate the actual value of the overall performance of a clinic, so that the application of supervised learning methods such as FNN to UCR is possible.
3. The MMBNLP–FNN Approach
3.1. Procedure
- Step 1. Perform an initial assessment of the overall performance of a clinic using the MMBNLP method.
- Step 2. Adjust the assessment result to simulate the actual value.
- Step 3. Construct an FNN to assess the overall performance of a clinic.
- Step 4. (Patient) Access the UCR system using a dedicated app.
- Step 5. (Central control unit) Record the location, required department, and preference of the patient into the system database.
- Step 6. (Central control unit) Apply the trained FNN to make a recommendation that is recorded into the system database and transmitted to the patient.
- Step 7. (Patient) Select a clinic and feedback his/her choice that is recorded into the system database.
3.2. The MMBNLP Method
- (1)
- In Constraint (10), the performance of clinic is likely to be exactly the same as that of a clinic it is superior to;
- (2)
- There are many nonlinear constraints, which prolongs the solution time and reduces the possibility of reaching the global optimal solution.
- (1)
- A threshold is added to Constraint (12) to break possible ties:
- (2)
- Constraint (5) is replaced by the following linear constraint:
3.3. Simulating the Overall Performance of a Clinic
- Step 1. Set i = 1.
- Step 2. If , adjust to and return to Step 1; otherwise, go to Step 3. is the required amendment.
- Step 3. Set i = i + 1. If i > n, stop; otherwise, return to Step 2.
3.4. FNN for Evaluating the Overall Performance of a Clinic
- (1)
- (2)
- Learning rate (η): 0.1;
- (3)
- Number of epochs: 1000;
- (4)
- Convergence criterion: mean squared error (MSE) < 10−4.
4. Regional Experiment
- (1)
- After optimization, the successful recommendation rate using the WM mechanism was only fair—70%, which showed that the decision-making mechanisms of patients might not be fully described by a simple linear mechanism such as WM.
- (2)
- Compared with the WM mechanism, the trained FNN achieved a better performance in elevating the successful recommendation rate,
- (3)
- To further elaborate on the effectiveness of the MMBNLP–FNN approach, three existing methods, including WA, OWA, and Chen and Chiu’s method, were also applied to the collected data for comparison. In WA, the values of weights were the same as those derived using Equation (34) for fair comparison. In OWA, the moderately optimistic decision strategy was adopted, in which weights of 0.6598, 0.1525, 0.1051, and 0.0827 were assigned to the first, second, third, and fourth performing attributes, respectively. In Chen and Chiu’s method, the MBNLP problem was solved to determine the values of weights. Figure 6 shows the comparison results of the performances using various methods. Obviously, the MMBNLP–FNN approach outperformed the existing methods by achieving the highest successful recommendation rate. In addition, the proposed methodology elevated the successful recommendation rates for both the training and test data. The advantage of the proposed methodology over WA was the most significant (i.e., up to 30%).
5. Conclusions
- (1)
- The existing linear mechanism could be improved by optimizing the values of weights. To this end, the proposed MMBNLP model was effective;
- (2)
- The trained FNN further elevated the successful recommendation rate using the UCR system, which showed that nonlinear rules could better describe the decision-making mechanisms of patients;
- (3)
- The advantage of the proposed methodology over WA was the most obvious, in which the successful recommendation rate was elevated by 30%. The superiority over Chen and Chiu’s MBNLP model was also significant.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Method | Type of Mechanism | Model | Explainability of Patient Choices |
---|---|---|---|
Tung and Chang [16] | Linear | LR | Partial |
Ekstrand et al. [13] | Linear | CF | Partial |
Chen [6] | Linear | FWA-INLP | Partial |
Chen [11] | Linear | FWA-NLP | Partial |
Chen and Chiu [31] | Linear | WA-NLP-RSM | Partial |
Kutlu Gündoğdu et al. [25] | Linear | Fuzzy EDAS | Partial |
Chen and Chiu [12] | Linear | WA-INLP (Group) | Partial |
The MMBNLP–FNN approach | Nonlinear | MMBNLP-FNN | All |
i | |||
---|---|---|---|
A | (4, 2, 3) | (2, 3, 3) | (3, 2, 4) |
B | (5, 3, 4) | (3, 5, 4) | (4, 4, 3) |
C | (5, 5, 1) | (5, 4, 2) | (2, 5, 2) |
D | (4, 3, 3) | (3, 3, 4) | (1, 5, 1) |
E | (5, 2, 4) | (4, 3, 4) | (2, 5, 3) |
i | |
---|---|
A | 3 |
B | 2 |
C | 3 |
D | 1 |
E | 3 |
i | |
---|---|
A | 3 |
B | 2 |
C | 3 |
D | 2 |
E | 3 |
i | |
---|---|
A | 2.9875 |
B | 4.3375 |
C | 3.5857 |
D | 3.6375 |
E | 3.7875 |
Criteria | Formulae for Assessing Attribute-Level Performances |
---|---|
Estimated waiting time | where is the expected waiting time (in min) of patient i after arriving at clinic j |
Estimated travel time | where is the shortest path length to clinic j (in min) for patient i |
Preference for the clinic | where is the preference of patient i for clinic j: Very low: = 1 Low: = 2 Moderate: = 3 High: = 4 Very high: = 5 |
Preference for the current doctor | where is the preference of patient i for the current doctor of clinic: j: Very low: = 1 Low: = 2 Moderate: = 3 High: = 4 Very high: = 5 |
i | |||
---|---|---|---|
1 | (2, 3, 2, 3) | (4, 4, 2, 5) | (1, 4, 3, 1) |
2 | (2, 2, 3, 4) | (4, 5, 1, 2) | (2, 4, 2, 1) |
3 | (5, 2, 2, 4) | (4, 4, 2, 4) | - |
4 | (2, 4, 4, 4) | (3, 1, 3, 5) | - |
5 | (3, 5, 3, 2) | (3, 2, 1, 4) | (2, 2, 2, 2) |
6 | (3, 3, 4, 4) | (2, 2, 2, 3) | (4, 3, 2, 4) |
7 | (2, 5, 5, 2) | (5, 4, 4, 3) | - |
8 | (3, 3, 4, 4) | (4, 5, 4, 1) | - |
9 | (4, 5, 2, 2) | (2, 4, 4, 3) | (3, 2, 4, 4) |
10 | (1, 5, 2, 2) | (5, 2, 1, 2) | (4, 4, 2, 1) |
i | |
---|---|
1 | 2 |
2 | 2 |
3 | 1 |
4 | 1 |
5 | 1 |
6 | 1 |
7 | 2 |
8 | 1 |
9 | 1 |
10 | 2 |
i | |
---|---|
1 | 2 |
2 | 1 |
3 | 2 |
4 | 2 |
5 | 2 |
6 | 1 |
7 | 2 |
8 | 1 |
9 | 3 |
10 | 2 |
i | |||
---|---|---|---|
1 | 2.585 | 4.043 | 1.746 |
2 | 3.186 | 3.386 | 1.721 |
3 | 3.760 | 3.560 | - |
4 | 3.960 | 3.762 | - |
5 | 3.141 | 2.941 | 2.000 |
6 | 3.703 | 2.483 | 3.458 |
7 | 2.966 | 3.712 | - |
8 | 3.703 | 2.653 | - |
9 | 3.801 | 3.127 | 3.601 |
10 | 2.111 | 2.365 | 2.111 |
i | |||
---|---|---|---|
11 | (1, 4, 4, 2) | (3, 2, 4, 4) | (1, 3, 3, 5) |
12 | (1, 2, 4, 4) | (3, 3, 2, 4) | (3, 5, 5, 2) |
13 | (2, 4, 2, 2) | (3, 2, 2, 4) | (1, 5, 4, 4) |
14 | (5, 3, 3, 5) | (2, 5, 3, 5) | (4, 1, 3, 1) |
15 | (3, 4, 4, 1) | (3, 3, 1, 3) | (3, 2, 2, 5) |
16 | (3, 4, 3, 4) | (5, 2, 4, 3) | (4, 3, 1, 2) |
17 | (2, 2, 2, 3) | (3, 3, 1, 4) | (3, 2, 4, 4) |
18 | (3, 4, 3, 4) | (4, 4, 1, 2) | (1, 1, 3, 1) |
19 | (1, 1, 4, 4) | (2, 2, 5, 2) | - |
20 | (5, 3, 2, 5) | (3, 3, 1, 1) | - |
i | ||
---|---|---|
11 | 2 | 2 |
12 | 2 | 3 |
13 | 3 | 3 |
14 | 1 | 1 |
15 | 3 | 3 |
16 | 1 | 2 |
17 | 3 | 3 |
18 | 1 | 1 |
19 | 1 | 2 |
20 | 1 | 1 |
i | |
---|---|
11 | 2 |
12 | 3 |
13 | 3 |
14 | 1 |
15 | 3 |
16 | 2 |
17 | 3 |
18 | 1 |
19 | 1 |
20 | 1 |
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Lin, Y.-C.; Chen, T. A Ubiquitous Clinic Recommendation System Using the Modified Mixed-Binary Nonlinear Programming-Feedforward Neural Network Approach. J. Theor. Appl. Electron. Commer. Res. 2021, 16, 3282-3298. https://doi.org/10.3390/jtaer16070178
Lin Y-C, Chen T. A Ubiquitous Clinic Recommendation System Using the Modified Mixed-Binary Nonlinear Programming-Feedforward Neural Network Approach. Journal of Theoretical and Applied Electronic Commerce Research. 2021; 16(7):3282-3298. https://doi.org/10.3390/jtaer16070178
Chicago/Turabian StyleLin, Yu-Cheng, and Toly Chen. 2021. "A Ubiquitous Clinic Recommendation System Using the Modified Mixed-Binary Nonlinear Programming-Feedforward Neural Network Approach" Journal of Theoretical and Applied Electronic Commerce Research 16, no. 7: 3282-3298. https://doi.org/10.3390/jtaer16070178
APA StyleLin, Y. -C., & Chen, T. (2021). A Ubiquitous Clinic Recommendation System Using the Modified Mixed-Binary Nonlinear Programming-Feedforward Neural Network Approach. Journal of Theoretical and Applied Electronic Commerce Research, 16(7), 3282-3298. https://doi.org/10.3390/jtaer16070178