VLDB2025

Customization Meets 2-Hop Labeling: Efficient Routing in Road Networks

Muhammad Farhan, Henning Koehler, Qing Wang, Jiawen Wang, Moritz Laupichler, Peter Sanders

1 citation

Abstract

Efficient route planning is crucial for modern navigation systems, yet traditional methods face challenges in scenarios with unknown or frequently changing traffic dynamics. This paper introduces a general labeling framework based on the 2-hop cover property, enabling robust, metric-independent preprocessing. Using this framework, we propose Customizable Tree Labeling (CTL), a tree-based method combining three key components: metric-independent preprocessing with tree hierarchies, metric customization for dynamic updates, and efficient query algorithms for fast route computation. To allow trade-offs between customization time, labeling size, and query performance, we further develop a parameterized customization technique by dynamically combining tree labels and shortcut graphs. Our key contributions include the introduction of a customizable labeling framework, a novel tree hierarchy for compact and scalable representation, and a hybrid query algorithm that integrates labels and shortcuts for fast and accurate route computation. We conduct extensive experiments on ten large-scale real-world road networks and a case study on the traffic assignment problem. Our algorithms achieve query response times significantly faster than the state-of-the-art methods, while maintaining competitive customization times and labeling size, making it well-suited for real-time and dynamic routing applications.