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Deep Survival Modelling for Shared Mobility
- Source :
- Danish Journal of Transportation Research-Dansk tidskrift for transportforskning, Kostic, B, Loft, M P, Rodrigues, F, Borysov, S & Pereira, F C 2020, ' Deep Survival Modelling for Shared Mobility ', Danish Journal of Transportation Research-Dansk tidskrift for transportforskning . https://doi.org/10.5278/ojs.td.v27i1.6166, Kostic, B, Loft, M P, Rodrigues, F & Borysov, S S 2021, ' Deep survival modelling for shared mobility ', Transportation Research Part C: Emerging Technologies, vol. 128, 103213 . https://doi.org/10.1016/j.trc.2021.103213
- Publication Year :
- 2020
-
Abstract
- With an increased focus on minimizing traffic externalities in metropolitan areas, a growing interest in environmentally friendly and shared mobility systems has emerged, such as electric car-sharing systems. However, increasing demand and larger area coverage often make it difficult to keep cars available where and when customers need them. This problem can be alleviated by predicting for how long cars stay vacant at given pick-up/drop-off locations. To maximize their usage, it can be more beneficial to relocate the cars at certain periods to more desired locations. In this paper, we tackle the problem of predicting time-to-pickup for shared cars in a probabilistic way as a function of time by applying time-to-event modelling through survival analysis. Both statistical and deep neural network approaches to survival regression were investigated. The Cox proportional hazards model (CPH) is compared to the deep neural network model DeepSurv. To predict survival times, a two-step approach was formulated, where in the upper level a classification is used to classify cars into two groups based on idle time duration, whereas in the lower level for each given group time-to-event modelling is applied. DeepSurv method demonstrated a stronger fit compared to CPH. The two-step approach resulted in over 15% improvement in performance, comparing to the one-step approach, where no classification is used.<br />Proceedings from the Annual Transport Conference at Aalborg University, Vol. 27 No. 1 (2020): Proceedings from the Annual Transport Conference at Aalborg University
- Subjects :
- Service (systems architecture)
Computer science
Gaussian
Transportation
010501 environmental sciences
Management Science and Operations Research
01 natural sciences
symbols.namesake
11. Sustainability
0502 economics and business
Econometrics
0105 earth and related environmental sciences
Civil and Structural Engineering
050210 logistics & transportation
Artificial neural network
Proportional hazards model
Event (computing)
05 social sciences
Data Science
Probabilistic logic
Regression analysis
Survival analysis
Shared mobility
Regression
Automotive Engineering
symbols
Deep survival modelling
Car-sharing
Neural networks
Subjects
Details
- ISSN :
- 16039696
- Database :
- OpenAIRE
- Journal :
- Danish Journal of Transportation Research - Dansk tidskrift for transportforskning
- Accession number :
- edsair.doi.dedup.....06b6fc788b4c86e6222d57655b1e3771
- Full Text :
- https://doi.org/10.5278/ojs.td.v27i1.6166