Prior and Posterior Linear Pooling for Combining Expert Opinions: Uses and Impact on Bayesian Networks—The Case of the Wayfinding Model
Abstract
:1. Introduction
2. Bayesian Networks
3. Linear Pooling Methods for Combining Opinions
Advantages and Disadvantages of Linear Pooling Methods for Combining Opinions
4. The Wayfinding Bayesian Network Model
5. Case Study: Linear Pooling Methods and the Wayfinding Bayesian Network Model
5.1. Prior Linear Pooling (PrLP)
5.2. Posterior Linear Pooling (PoLP)
6. Conclusions
Acknowledgments
Author Contributions
Conflicts of Interest
References
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Method | Advantages | Disadvantages |
---|---|---|
Prior Linear Pooling (PrLP) | · Smaller number of steps are required to obtain marginal probabilities of interest. · Having only one BN makes updating information easier and more timely. · Diagnostic, predictive, and intercausal reasoning are easier to undertake. | · Pooling, when used with BNs do not follow a coherent probability model [25]. · Since each of the probabilities given by the experts are pooled within each entry of the CPT, the resulting averages are not a reflection of what was originally given by the expert for that entry, and so the conditional independence structure is lost. |
Posterior Linear Pooling (PoLP) | · The conditional independence structure of the BN is maintained. | · More steps are required in order to obtain the marginal probabilities of interest. · Updating information can be time consuming if there are a large number of experts, and hence BNs. · Diagnostic, predictive, and intercausal reasoning is also time consuming if there are a large number of experts. This is because each individual BN must be modified and then pooling once again done to obtain the marginal probabilities of interest. |
Node | Description | States |
---|---|---|
Communication | The effectiveness of communication in the airport terminal | Effective, Ineffective |
Environmental Factors | The level of the environmental factors such as terminal design and navigation pathway complexity that contribute to effective wayfinding in airport terminals | Good, Bad |
Human Factors | The level of the human factors such as spatial anxiety and cognitive and spatial skills that contribute to effective wayfinding in airport terminals | Good, Bad |
Navigation Pathway | The complexity of the navigation pathway that a passenger must traverse in order to reach a desired destination in the airport terminal | Simple, Complex |
Visual Elements of Communication | The quality of the visual elements of communication in the airport terminal | Good, Bad |
Wayfinding | The effectiveness of wayfinding in the airport terminal | Effective, Ineffective |
Group | Human Factors Good | Wayfinding Effective |
---|---|---|
All | 0.8033 | 0.8057 |
Female | 0.7790 | 0.7876 |
Male | 0.8369 | 0.8305 |
Business | 0.8033 | 0.8057 |
Personal | 0.8033 | 0.8057 |
Experienced | 0.8135 | 0.8132 |
Inexperienced | 0.7458 | 0.7683 |
Good Human Factors | Effective Wayfinding | |
---|---|---|
All | 0.8033 | 0.8057 |
Female, Experienced | 0.7880 [0.0153] | 0.7943 [0.0114] |
Female, Inexperienced | 0.7282 [0.0751] | 0.7500 [0.0557] |
Male, Experienced | 0.8487 [0.0454] | 0.8393 [0.0336] |
Male, Inexperienced | 0.7701 [0.0332] | 0.7810 [0.0247] |
Group | Communication Effective | Environmental Factors Good | Human Factors Good | Navigation Pathway Simple | Visual Elements of Communication Good |
---|---|---|---|---|---|
Full network | 0.8115 | 0.7697 | 0.8033 | 0.6893 | 0.7087 |
Female | 0.8183 [0.0068] | 0.7931 [0.0234] | 0.9410 [0.1377] | 0.6941 [0.0048] | 0.7114 [0.0027] |
Male | 0.8239 [0.0012] | 0.7901 [0.0020] | 0.9587 [0.1554] | 0.6935 [0.0042] | 0.7137 [0.0050] |
Business | 0.8207 [0.0092] | 0.7918 [0.0021] | 0.9487 [0.1454] | 0.6939 [0.0046] | 0.7124 [0.0037] |
Personal | 0.8207 [0.0092] | 0.7918 [0.0021] | 0.9487 [0.1454] | 0.6939 [0.0046] | 0.7124 [0.0037] |
Experienced | 0.8201 [0.0086] | 0.7947 [0.0022] | 0.9518 [0.1485] | 0.6937 [0.0044] | 0.7121 [0.0034] |
Inexperienced | 0.8246 [0.0013] | 0.7947 [0.0025] | 0.9300 [0.1267] | 0.6945 [0.0052] | 0.7139 [0.0052] |
Group | Communication Effective | Environmental Factors Good | Human Factors Good | Navigation Pathway Simple | Visual Elements of Communication Good | Wayfinding Effective |
---|---|---|---|---|---|---|
All | 0.7415 | 0.7672 | 0.7082 | 0.6509 | 0.8188 | 0.7517 |
Female | 0.7430 [0.0014] | 0.7680 [0.0007] | 0.7400 [0.0318] | 0.6524 [0.0015] | 0.8194 [0.0006] | 0.7546 [0.0029] |
Male | 0.7403 [0.0012] | 0.7666 [0.0006] | 0.6811 [0.0270] | 0.6495 [0.0013] | 0.8182 [0.0005] | 0.7492 [0.0024] |
Business | 0.7413 [0.0002] | 0.7674 [0.0001] | 0.6698 [0.0383] | 0.6517 [0.0008] | 0.8206 [0.0018] | 0.7585 [0.0067] |
Personal | 0.7416 [0.0001] | 0.7672 [0.00006] | 0.7247 [0.0164] | 0.6505 [0.0003] | 0.8180 [0.0007] | 0.7488 [0.0029] |
Experienced | 0.7363 [0.0052] | 0.7666 [0.0006] | 0.7006 [0.0076] | 0.6503 [0.0005] | 0.8180 [0.0007] | 0.7485 [0.0031] |
Inexperienced | 0.7690 [0.0274] | 0.7705 [0.0032] | 0.7482 [0.0399] | 0.6537 [0.0028] | 0.8230 [0.0041] | 0.7683 [0.0165] |
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Farr, C.; Ruggeri, F.; Mengersen, K. Prior and Posterior Linear Pooling for Combining Expert Opinions: Uses and Impact on Bayesian Networks—The Case of the Wayfinding Model. Entropy 2018, 20, 209. https://doi.org/10.3390/e20030209
Farr C, Ruggeri F, Mengersen K. Prior and Posterior Linear Pooling for Combining Expert Opinions: Uses and Impact on Bayesian Networks—The Case of the Wayfinding Model. Entropy. 2018; 20(3):209. https://doi.org/10.3390/e20030209
Chicago/Turabian StyleFarr, Charisse, Fabrizio Ruggeri, and Kerrie Mengersen. 2018. "Prior and Posterior Linear Pooling for Combining Expert Opinions: Uses and Impact on Bayesian Networks—The Case of the Wayfinding Model" Entropy 20, no. 3: 209. https://doi.org/10.3390/e20030209
APA StyleFarr, C., Ruggeri, F., & Mengersen, K. (2018). Prior and Posterior Linear Pooling for Combining Expert Opinions: Uses and Impact on Bayesian Networks—The Case of the Wayfinding Model. Entropy, 20(3), 209. https://doi.org/10.3390/e20030209