An Experimental Evaluation of Imputation Models for Spatial-Temporal Traffic Data
Traffic data imputation is a critical preprocessing step in intelligent transportation systems, enabling advanced transportation services. Despite significant advancements in this field, selecting the most suitable model for practical applications remains challenging due to three key issues: 1) inco...
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Zusammenfassung: | Traffic data imputation is a critical preprocessing step in intelligent
transportation systems, enabling advanced transportation services. Despite
significant advancements in this field, selecting the most suitable model for
practical applications remains challenging due to three key issues: 1)
incomprehensive consideration of missing patterns that describe how data loss
along spatial and temporal dimensions, 2) the lack of test on standardized
datasets, and 3) insufficient evaluations. To this end, we first propose
practice-oriented taxonomies for missing patterns and imputation models,
systematically identifying all possible forms of real-world traffic data loss
and analyzing the characteristics of existing models. Furthermore, we introduce
a unified benchmarking pipeline to comprehensively evaluate 10 representative
models across various missing patterns and rates. This work aims to provide a
holistic understanding of traffic data imputation research and serve as a
practical guideline. |
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DOI: | 10.48550/arxiv.2412.04733 |