TL;DR
This paper introduces a scalable tensor learning model, LSTC-Tubal, for imputing missing values in large-scale, high-dimensional spatiotemporal traffic data, achieving high accuracy with lower computational costs.
Contribution
The paper proposes a novel scalable tensor completion method based on low-tubal-rank smoothing and unitary transformation, improving efficiency for large-scale traffic data imputation.
Findings
LSTC-Tubal achieves competitive accuracy with less computational cost.
The method effectively preserves day-to-day correlations in traffic data.
It outperforms state-of-the-art models in large-scale traffic data imputation.
Abstract
Missing value problem in spatiotemporal traffic data has long been a challenging topic, in particular for large-scale and high-dimensional data with complex missing mechanisms and diverse degrees of missingness. Recent studies based on tensor nuclear norm have demonstrated the superiority of tensor learning in imputation tasks by effectively characterizing the complex correlations/dependencies in spatiotemporal data. However, despite the promising results, these approaches do not scale well to large data tensors. In this paper, we focus on addressing the missing data imputation problem for large-scale spatiotemporal traffic data. To achieve both high accuracy and efficiency, we develop a scalable tensor learning model -- Low-Tubal-Rank Smoothing Tensor Completion (LSTC-Tubal) -- based on the existing framework of Low-Rank Tensor Completion, which is well-suited for spatiotemporal…
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