LGAIFeb 2, 2025

Neurosymbolic AI for Travel Demand Prediction: Integrating Decision Tree Rules into Neural Networks

arXiv:2502.01680v11 citationsh-index: 3IWCMC
Originality Incremental advance
AI Analysis

This addresses transportation planning needs by enhancing prediction accuracy and interpretability, though it is incremental as it combines existing methods.

This study tackled travel demand prediction by integrating decision tree rules into neural networks, resulting in improved performance across metrics like MAE and R² with rules at fine variance thresholds reducing errors.

Travel demand prediction is crucial for optimizing transportation planning, resource allocation, and infrastructure development, ensuring efficient mobility and economic sustainability. This study introduces a Neurosymbolic Artificial Intelligence (Neurosymbolic AI) framework that integrates decision tree (DT)-based symbolic rules with neural networks (NNs) to predict travel demand, leveraging the interpretability of symbolic reasoning and the predictive power of neural learning. The framework utilizes data from diverse sources, including geospatial, economic, and mobility datasets, to build a comprehensive feature set. DTs are employed to extract interpretable if-then rules that capture key patterns, which are then incorporated as additional features into a NN to enhance its predictive capabilities. Experimental results show that the combined dataset, enriched with symbolic rules, consistently outperforms standalone datasets across multiple evaluation metrics, including Mean Absolute Error (MAE), \(R^2\), and Common Part of Commuters (CPC). Rules selected at finer variance thresholds (e.g., 0.0001) demonstrate superior effectiveness in capturing nuanced relationships, reducing prediction errors, and aligning with observed commuter patterns. By merging symbolic and neural learning paradigms, this Neurosymbolic approach achieves both interpretability and accuracy.

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