LGDec 6, 2024

A Survey and Benchmarking of Spatial-Temporal Traffic Data Imputation Models

arXiv:2412.04733v2h-index: 27
AI Analysis

This work provides a comprehensive benchmarking framework for traffic data imputation models, which is incremental but valuable for researchers and practitioners in intelligent transportation systems.

This paper addresses the lack of systematic evaluation in traffic data imputation by proposing taxonomies for missing patterns and models, and introducing a unified benchmarking pipeline that evaluates 11 representative models across various scenarios to provide practical guidelines for model selection.

Traffic data imputation is a critical preprocessing step in intelligent transportation systems, underpinning the reliability of downstream transportation services. Despite substantial progress in imputation models, model selection and development for practical applications remains challenging due to three key gaps: 1) the absence of a model taxonomy for traffic data imputation to trace the technological development and highlight their distinct features. 2) the lack of unified benchmarking pipeline for fair and reproducible model evaluation across standardized traffic datasets. 3) insufficient in-depth analysis that jointly compare models across multiple dimensions, including effectiveness, computational efficiency and robustness. To this end, this paper proposes practice-oriented taxonomies for traffic data missing patterns and imputation models, systematically cataloging real-world traffic data loss scenarios and analyzing the characteristics of existing models. We further introduce a unified benchmarking pipeline to comprehensively evaluate 11 representative models across various missing patterns and rates, assessing overall performance, performance under challenging scenarios, computational efficiency, and providing visualizations. This work aims to provide a holistic perspective on traffic data imputation and to serve as a practical guideline for model selection and application in intelligent transportation systems.

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