Preference-Aware Delivery Planning for Last-Mile Logistics
Qian Shao, Shih-Fen Cheng

TL;DR
This paper introduces a hierarchical route optimization method that combines machine learning and optimization to better align delivery routes with practitioners' preferences in last-mile logistics.
Contribution
It proposes a novel hierarchical route optimizer with learnable parameters and Bayesian optimization, bridging the gap between optimized routes and practitioner preferences.
Findings
Demonstrates effectiveness on real-world Amazon dataset
Highlights importance of combining optimization and machine learning
Identifies difficult instances for routing optimization
Abstract
Optimizing delivery routes for last-mile logistics service is challenging and has attracted the attention of many researchers. These problems are usually modeled and solved as variants of vehicle routing problems (VRPs) with challenging real-world constraints (e.g., time windows, precedence). However, despite many decades of solid research on solving these VRP instances, we still see significant gaps between optimized routes and the routes that are actually preferred by the practitioners. Most of these gaps are due to the difference between what's being optimized, and what the practitioners actually care about, which is hard to be defined exactly in many instances. In this paper, we propose a novel hierarchical route optimizer with learnable parameters that combines the strength of both the optimization and machine learning approaches. Our hierarchical router first solves a zone-level…
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Taxonomy
TopicsVehicle Routing Optimization Methods · Urban and Freight Transport Logistics · Maritime Ports and Logistics
Methodstravel james
