LGOCApr 2, 2021

Modeling Censored Mobility Demand through Quantile Regression Neural Networks

arXiv:2104.01214v217 citations
Originality Incremental advance
AI Analysis

This work addresses the need for accurate demand modeling in shared mobility services, though it is incremental as it builds on existing Censored Quantile Regression methods by improving efficiency and coherence.

The paper tackled the problem of modeling censored mobility demand by extending Censored Quantile Regression models to learn multiple quantiles simultaneously, resulting in fewer quantile crossings and reduced computational overhead without compromising performance on synthetic and real-world datasets from Copenhagen.

Shared mobility services require accurate demand models for effective service planning. On the one hand, modeling the full probability distribution of demand is advantageous because the entire uncertainty structure preserves valuable information for decision-making. On the other hand, demand is often observed through the usage of the service itself, so that the observations are censored, as they are inherently limited by available supply. Since the 1980s, various works on Censored Quantile Regression models have performed well under such conditions. Further, in the last two decades, several papers have proposed to implement these models flexibly through Neural Networks. However, the models in current works estimate the quantiles individually, thus incurring a computational overhead and ignoring valuable relationships between the quantiles. We address this gap by extending current Censored Quantile Regression models to learn multiple quantiles at once and apply these to synthetic baseline datasets and datasets from two shared mobility providers in the Copenhagen metropolitan area in Denmark. The results show that our extended models yield fewer quantile crossings and less computational overhead without compromising model performance.

Foundations

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