Investigating the Cultural Impact on Predicting Crowd Behavior
Abstract
:1. Introduction
- Most of the best-case experiments that included the UAE tended to have lower MSEs: 0.127, 0.014, and 0.010. This implies that applying the CC-ANN to a nation with a different culture and cultural dimensions improved the model’s ability to predicate the crowd’s social and physical behavior because it gained more knowledge about other cultures.
- Most comparable experiments, with and without the UAE, had one common cultural dimension. These similarities reflect a strong correlation between these common cultural dimensions and the target attributes. This implies that applying the CC-ANN to a nation with a different culture and cultural dimensions provides a different perspective with stronger correlations on the influence of cultural background on individuals’ behavior in crowds.
2. The CC-ANN Learning Model
2.1. The HCD Model
The HCD Dataset
2.2. The CC Learning Model
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- The cultural dimension, which reflects the cultural characteristics of the crowd in regard to Hofstede’s essential study [7], as explained in Section 2.1. The current study only included four cultural dimensions (PDI, IDV, MAS, and UAI).
The CC Dataset
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- Physical characteristics: speed, distance, number of people, angular variation, area, direction, and number of frames.
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- Social characteristics: cohesion and collectivity.
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- Speed is associated with the group’s mean speed.
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- Distance is proportional to the average distance between group members.
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- Collectivity denotes the degree to which grouped individuals act as a union [9].
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- Cohesion specifies the constancy of the group’s relationships [10].
2.3. The Dataset
- Input attributes: The four HCDs (PDI, IDV, MAS, and UAI), number of people, angular variation, area, direction, and number of frames. Table 3 shows a statistical analysis of the input attributes.
- Target attributes: Speed, distance, cohesion, and collectivity.
2.4. The ANN Model
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- Number of Epochs: denotes how many times the training algorithm will iterate over the training dataset, both forward and backward, to update the neural network’s parameters.
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- Batch Size: denotes how many training instances are processed in one epoch.
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- Optimizer: denotes the algorithm utilized to adjust the weight of each layer after each iteration to minimize the loss function.
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- Kernel Initialization: denotes the method of initializing the random weights of Keras layers, which affects the model’s performance and convergence rate [13].
2.5. The CC-ANN Learning Model Design
- Number of Epochs: 50, 100, and 150.
- Batch Size: 5, 10, and 20.
- Optimizer: ‘RMSProp’ and ‘Adam’.
- Kernel Initialization: glorot uniform, uniform, and normal.
3. Experiments
- The first set of experiments aimed to examine the effect of adding each HCD individually on the ANN’s performance [1]. This set was designed to assess the impact of each HCD on the target attributes and included four experiments.
- The second set of experiments aimed to examine the effect of adding two HCDs on the ANN’s performance [1]. This set determined the impact of each pair of HCDs (permutation) on the target attributes and included six experiments.
4. Results and Discussion
4.1. Experiments Including the UAE
4.2. Comparing Experiments (with and without the UAE)
- The first aspect of the comparison focused on examining the best and worst cases of predicting the four target attributes in terms of MSE, allowing us to determine whether the CC-ANN performed better when the UAE was included or not.
- The second aspect of the comparison focused on comparing the best and worst cases of predicting the four target attributes in terms of appending HCDs in these cases. This allowed us to demonstrate that applying the CC-ANN to a different nation with a distinct culture, as we did in this study with the UAE, can provide a unique perspective on how cultural backgrounds affect individuals’ behavior in crowds.
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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HCD | Definition |
---|---|
Power Distance (PDI) | Related to the acceptable degree of distributing power through society. Large PDI: Indicates accepting that power distribution and privileges are hierarchical and unequal. Low PDI: Reflects striving to have equal rights as opposed to privileges. |
Individualism (IDV) | Concerns the identities of individuals. High IDV: Characterizes individualist societies, in which the sense of “I” is strong, and the identity of individuals is independent of others. Low IDV: Characterizes collectivist societies, in which the sense of “we” is strong, and individuals are practically and psychologically dependent on interpersonal and group interactions. |
Masculinity (MAS) | Reveals social issues. High MAS: Indicates masculine societies in which social status and personal accomplishment are prioritized over material success. Low MAS: Indicates feminine societies which emphasize modesty, assistance, care for the weak, and life’s quality. Society as a whole is increasingly consensus oriented. |
Uncertainty Avoidance (UAI) | Indicates the acceptance of uncertainty. High UAI: Indicates a preference for structure and predictability governed by both written and unwritten rules. Low UAI: Highlights the normality of uncertainty in addition to having a more laid-back attitude in which practice trumps principles. |
Nation | PDI | IDV | MAS | UAI |
---|---|---|---|---|
Austria | 11 | 55 | 79 | 70 |
China | 80 | 20 | 66 | 30 |
France | 68 | 71 | 43 | 86 |
Brazil | 69 | 38 | 49 | 76 |
Japan | 54 | 46 | 95 | 92 |
Germany | 35 | 67 | 66 | 65 |
Spain | 57 | 51 | 42 | 86 |
Turkey | 66 | 37 | 45 | 85 |
United Arab Emirates | 90 | 25 | 50 | 80 |
Statistical Analysis | PDI | IDV | MAS | UAI | Number of People | Angular Variation | Area | Direction | Number of Frames |
---|---|---|---|---|---|---|---|---|---|
Mean | 62.40 | 40.78 | 57.70 | 71.66 | 2.41 | 0.46 | 1.57 | 181.43 | 118.91 |
Mode | 69.00 | 38.00 | 49.00 | 76.00 | 2.00 | N/A | 1.48 | N/A | 37.00 |
MAX | 90.00 | 71.00 | 95.00 | 92.00 | 6.00 | 1.13 | 5.37 | 355.85 | 638.00 |
Q1 | 57.00 | 37.00 | 49.00 | 70.00 | 2.00 | 0.27 | 0.80 | 106.56 | 50.00 |
Median | 69.00 | 38.00 | 49.00 | 76.00 | 2.00 | 0.40 | 1.34 | 174.26 | 91.00 |
Q3 | 69.00 | 48.50 | 66.00 | 85.00 | 3.00 | 0.62 | 2.44 | 249.86 | 147.00 |
MIN | 11.00 | 20.00 | 42.00 | 30.00 | 2.00 | 0.11 | 0.19 | 18.62 | 14.00 |
Range | 79.00 | 51.00 | 53.00 | 62.00 | 4.00 | 1.02 | 5.19 | 337.23 | 624.00 |
Variance | 387.10 | 196.71 | 233.40 | 336.27 | 0.55 | 0.06 | 1.02 | 6993.91 | 9679.61 |
std. | 19.67 | 14.03 | 15.28 | 18.34 | 0.74 | 0.25 | 1.01 | 83.63 | 98.39 |
Attributes/Parameter | Speed | Distance | Cohesion | Collectivity |
---|---|---|---|---|
Epochs | 150 | 50 | 150 | 150 |
Batch | 5 | 20 | 10 | 5 |
Optimizer | rmsprop | rmsprop | rmsprop | adam |
Kernel Initialization | normal | normal | normal | normal |
Loss (MSE) | 0.125 | 0.061 | 0.014 | 0.009 |
Target Attribute | Best Case | Worst Case | ||
---|---|---|---|---|
Included HCDs | MSE | Included HCDs | MSE | |
Speed | MAS and UAI | 0.127 | UAI | 0.227 |
Distance | IDV and UAI | 0.061 | MAS | 0.065 |
Cohesion | MAS and UAI | 0.014 | PDI and UAI | 0.015 |
Collectivity | IDV | 0.010 | PDI and IDV | 0.017 |
Speed Range | Distance Range | Cohesion Range | Collectivity Range |
---|---|---|---|
0.100 | 0.003 | 0.001 | 0.007 |
Target Attribute | Best MSE | Worst MSE | The Difference (MSE) |
---|---|---|---|
Speed | 382,249.31 | 681,081.79 | 298,832.48 |
Distance | 183,862.56 | 193,700.98 | 9838.42 |
Cohesion | 41,391.35 | 44,690.76 | 3299.41 |
Collectivity | 29,916.95 | 49,696.92 | 19,779.97 |
Included HCDs | Significant HCDs | Included HCDs | Significant HCDs |
---|---|---|---|
IDV | IDV | PDI and UAI | UAI |
MAS | MAS | IDV and MAS | IDV, MAS |
UAI | UAI | IDV and UAI | UAI |
PDI and IDV | PDI, IDV | MAS and UAI | MAS, UAI |
PDI and MAS | PDI, MAS |
Included HCDs | Significant HCDs |
---|---|
UAI | UAI |
PDI and UAI | UAI |
Target Attribute | Best Case | Worst Case | ||
---|---|---|---|---|
Included HCDs | MSE | Included HCDs | MSE | |
Speed | IDV and UAI | 0.132 | IDV | 0.250 |
Distance | MAS and UAI | 0.049 | IDV and UAI | 0.053 |
Cohesion | MAS and UAI | 0.010 | PDI and UAI | 0.011 |
Collectivity | IDV | 0.010 | PDI and IDV | 0.017 |
Target Attribute | With/Without UAE | Best Case | Worst Case | ||
---|---|---|---|---|---|
Included HCDs | MSE | Included HCDs | MSE | ||
Speed | With UAE | MAS and UAI | 0.12742 | UAI | 0.22703 |
Without UAE | IDV and UAI | 0.13237 | IDV | 0.24961 | |
Distance | With UAE | IDV and UAI | 0.06129 | MAS | 0.06457 |
Without UAE | MAS and UAI | 0.04864 | IDV and UAI | 0.05256 | |
Cohesion | With UAE | MAS and UAI | 0.01380 | PDI and UAI | 0.01490 |
Without UAE | IDV and MAS | 0.01400 | PDI and MAS | 0.01469 | |
Collectivity | With UAE | IDV | 0.00997 | PDI and IDV | 0.01657 |
Without UAE | MAS and UAI | 0.01032 | PDI and UAI | 0.01100 |
Target Attribute | Best Case | Worst Case |
---|---|---|
Speed | −0.00495 | −0.02258 |
Distance | 0.01265 | 0.01201 |
Cohesion | −0.00020 | 0.00020 |
Collectivity | −0.00035 | 0.00556 |
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Muhdher, F.J.; Abulnaja, O.A.; Baothman, F.A. Investigating the Cultural Impact on Predicting Crowd Behavior. Computers 2023, 12, 108. https://doi.org/10.3390/computers12050108
Muhdher FJ, Abulnaja OA, Baothman FA. Investigating the Cultural Impact on Predicting Crowd Behavior. Computers. 2023; 12(5):108. https://doi.org/10.3390/computers12050108
Chicago/Turabian StyleMuhdher, Fatima Jafar, Osama Ahmed Abulnaja, and Fatmah Abdulrahman Baothman. 2023. "Investigating the Cultural Impact on Predicting Crowd Behavior" Computers 12, no. 5: 108. https://doi.org/10.3390/computers12050108
APA StyleMuhdher, F. J., Abulnaja, O. A., & Baothman, F. A. (2023). Investigating the Cultural Impact on Predicting Crowd Behavior. Computers, 12(5), 108. https://doi.org/10.3390/computers12050108