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MixTTE: Multi-Level Mixture-of-Experts for Scalable and Adaptive Travel Time Estimation

Published: January 6, 2026 | arXiv ID: 2601.02943v1

By: Wenzhao Jiang , Jindong Han , Ruiqian Han and more

Potential Business Impact:

Makes ride-hailing apps predict travel time better.

Business Areas:
Taxi Service Transportation

Accurate Travel Time Estimation (TTE) is critical for ride-hailing platforms, where errors directly impact user experience and operational efficiency. While existing production systems excel at holistic route-level dependency modeling, they struggle to capture city-scale traffic dynamics and long-tail scenarios, leading to unreliable predictions in large urban networks. In this paper, we propose \model, a scalable and adaptive framework that synergistically integrates link-level modeling with industrial route-level TTE systems. Specifically, we propose a spatio-temporal external attention module to capture global traffic dynamic dependencies across million-scale road networks efficiently. Moreover, we construct a stabilized graph mixture-of-experts network to handle heterogeneous traffic patterns while maintaining inference efficiency. Furthermore, an asynchronous incremental learning strategy is tailored to enable real-time and stable adaptation to dynamic traffic distribution shifts. Experiments on real-world datasets validate MixTTE significantly reduces prediction errors compared to seven baselines. MixTTE has been deployed in DiDi, substantially improving the accuracy and stability of the TTE service.

Country of Origin
🇭🇰 Hong Kong

Page Count
12 pages

Category
Computer Science:
Machine Learning (CS)