Reinforcement Learning for Freight Booking Control Problems
Justin Dumouchelle, Emma Frejinger, Andrea Lodi

TL;DR
This paper introduces a novel two-phase reinforcement learning approach for freight booking control, combining supervised learning to predict operational costs with RL policies, improving efficiency in complex, computationally hard decision problems.
Contribution
It proposes a general two-phase method that integrates supervised learning with reinforcement learning to handle complex freight booking control problems efficiently.
Findings
Effective in distributional logistics scenarios
Applicable to airline cargo management
Reduces computational time for operational decision-making
Abstract
Booking control problems are sequential decision-making problems that occur in the domain of revenue management. More precisely, freight booking control focuses on the problem of deciding to accept or reject bookings: given a limited capacity, accept a booking request or reject it to reserve capacity for future bookings with potentially higher revenue. This problem can be formulated as a finite-horizon stochastic dynamic program, where accepting a set of requests results in a profit at the end of the booking period that depends on the cost of fulfilling the accepted bookings. For many freight applications, the cost of fulfilling requests is obtained by solving an operational decision-making problem, which often requires the solutions to mixed-integer linear programs. Routinely solving such operational problems when deploying reinforcement learning algorithms may be too time consuming.…
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Taxonomy
TopicsTransportation and Mobility Innovations · Vehicle Routing Optimization Methods · Supply Chain and Inventory Management
