Daniel Fay’s research while affiliated with Brooklyn College and other places

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Publications (1)


Fig. 1. User interaction with current and proposed system.
Fig. 6. Assumed distribution of the intercepts
Fig. 11. Distribution of average regret for different exploration factor
Fig. 15. (a) Actual and estimated acceptance rate, and (b) percent error, across the 200 runs.
Effect of Routing Constraints on Learning Efficiency of Destination Recommender Systems in Mobility-on-Demand Services
  • Article
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November 2020

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267 Reads

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5 Citations

IEEE Transactions on Intelligent Transportation Systems

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Daniel Fay

With Mobility-as-a-Service platforms moving toward vertical service expansion, we propose a destination recommender system for Mobility-on-Demand (MOD) services that explicitly considers dynamic vehicle routing constraints as a form of a "physical internet search engine". It incorporates a routing algorithm to build vehicle routes and an upper confidence bound based algorithm for a generalized linear contextual bandit algorithm to identify alternatives which are acceptable to passengers. As a contextual bandit algorithm, the added context from the routing subproblem makes it unclear how effective learning is under such circumstances. We propose a new simulation experimental framework to evaluate the impact of adding the routing constraints to the destination recommender algorithm. The proposed algorithm is first tested on a 7 by 7 grid network and performs better than benchmarks that include random alternatives, selecting the highest rating, or selecting the destination with the smallest vehicle routing cost increase. The RecoMOD algorithm also reduces average increases in vehicle travel costs compared to using random or highest rating recommendation. Its application to Manhattan dataset with ratings for 1,012 destinations reveals that a higher customer arrival rate and faster vehicle speeds lead to better acceptance rates. While these two results sound contradictory, they provide important managerial insights for MOD operators.

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Citations (1)


... Demand Responsive Transportation (DRT) providers/operators are often ridership-dependent. Persistently serving all requests at the cost of compromising users' experiences of on-board passengers can be rather myopic and unsustainable, considering service quality is the major incentive for stable future ridership (Yoon et al., 2020). Therefore, strategic planning, including designing fare policies for a fleet that operates as a DARP, is also critical (albeit overlooked) in DRT services. ...

Reference:

A chance-constrained dial-a-ride problem with utility-maximising demand and multiple pricing structures
Effect of Routing Constraints on Learning Efficiency of Destination Recommender Systems in Mobility-on-Demand Services

IEEE Transactions on Intelligent Transportation Systems