A Short-Term Predict-Then-Cluster Framework for Meal Delivery Services
Jingyi Cheng, Shadi Sharif Azadeh

TL;DR
This paper introduces a short-term predict-then-cluster framework for on-demand meal delivery, combining ensemble forecasting with innovative clustering methods to improve operational efficiency and demand management.
Contribution
It develops a novel framework integrating demand forecasting and dynamic clustering tailored for real-time city logistics, outperforming traditional methods in accuracy and efficiency.
Findings
Enhanced demand prediction accuracy over traditional time series methods
Dynamic clustering improves operational insights and responsiveness
Simulation shows proactive fleet rebalancing boosts delivery efficiency
Abstract
Micro-delivery services offer promising solutions for on-demand city logistics, but their success relies on efficient real-time delivery operations and fleet management. On-demand meal delivery platforms seek to optimize real-time operations based on anticipatory insights into citywide demand distributions. To address these needs, this study proposes a short-term predict-then-cluster framework for on-demand meal delivery services. The framework utilizes ensemble-learning methods for point and distributional forecasting with multivariate features, including lagged-dependent inputs to capture demand dynamics. We introduce Constrained K-Means Clustering (CKMC) and Contiguity Constrained Hierarchical Clustering with Iterative Constraint Enforcement (CCHC-ICE) to generate dynamic clusters based on predicted demand and geographical proximity, tailored to user-defined operational constraints.…
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Taxonomy
TopicsService and Product Innovation · Food Waste Reduction and Sustainability · Mobile Health and mHealth Applications
Methodsk-Means Clustering
