A deep real options policy for sequential service region design and timing
Srushti Rath, Joseph Y. J. Chow

TL;DR
This paper introduces a scalable deep reinforcement learning framework using RNNs for sequential service region design in mobility-on-demand services, significantly reducing computational costs while maintaining near-optimal investment strategies.
Contribution
It develops a novel deep real options policy employing RNNs to efficiently handle complex, multi-period investment sequencing without explicit enumeration.
Findings
Reduces computational time by over 90% compared to traditional methods.
Achieves near-optimal investment decisions with less than 1% performance gap.
Demonstrates effectiveness on NYC mobility service scenarios.
Abstract
As various city agencies and mobility operators navigate toward innovative mobility solutions, there is a need for strategic flexibility in well-timed investment decisions in the design and timing of mobility service regions, i.e. cast as "real options" (RO). This problem becomes increasingly challenging with multiple interacting RO in such investments. We propose a scalable machine learning based RO framework for multi-period sequential service region design & timing problem for mobility-on-demand services, framed as a Markov decision process with non-stationary stochastic variables. A value function approximation policy from literature uses multi-option least squares Monte Carlo simulation to get a policy value for a set of interdependent investment decisions as deferral options (CR policy). The goal is to determine the optimal selection and timing of a set of zones to include in a…
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Taxonomy
TopicsTransportation and Mobility Innovations · Transportation Planning and Optimization · Aviation Industry Analysis and Trends
Methodstravel james
