AICYLGJul 19, 2019

Empowering A* Search Algorithms with Neural Networks for Personalized Route Recommendation

arXiv:1907.08489v1112 citations
Originality Incremental advance
AI Analysis

This work addresses the challenge of generating user-specific route suggestions by improving heuristic search algorithms, representing an incremental advancement in personalized navigation systems.

The paper tackles the problem of personalized route recommendation by proposing a neural network approach to automatically learn cost functions for the A* algorithm, incorporating user context and moving states. Experimental results on three real-world datasets demonstrate the model's effectiveness and robustness.

Personalized Route Recommendation (PRR) aims to generate user-specific route suggestions in response to users' route queries. Early studies cast the PRR task as a pathfinding problem on graphs, and adopt adapted search algorithms by integrating heuristic strategies. Although these methods are effective to some extent, they require setting the cost functions with heuristics. In addition, it is difficult to utilize useful context information in the search procedure. To address these issues, we propose using neural networks to automatically learn the cost functions of a classic heuristic algorithm, namely A* algorithm, for the PRR task. Our model consists of two components. First, we employ attention-based Recurrent Neural Networks (RNN) to model the cost from the source to the candidate location by incorporating useful context information. Instead of learning a single cost value, the RNN component is able to learn a time-varying vectorized representation for the moving state of a user. Second, we propose to use a value network for estimating the cost from a candidate location to the destination. For capturing structural characteristics, the value network is built on top of improved graph attention networks by incorporating the moving state of a user and other context information. The two components are integrated in a principled way for deriving a more accurate cost of a candidate location. Extensive experiment results on three real-world datasets have shown the effectiveness and robustness of the proposed model.

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