TL;DR
This paper introduces a novel nonconvex tensor norm for imputing missing traffic data, effectively handling complex missing patterns and outperforming existing methods in real-world experiments.
Contribution
It proposes a nonconvex truncated Schatten p-norm for tensor completion, addressing limitations of nuclear norm-based methods in traffic data imputation.
Findings
Outperforms state-of-the-art tensor imputation models in various missing scenarios.
Effectively handles complex missing patterns including random and fiber-like missing data.
Demonstrates robustness and accuracy on real-world spatiotemporal traffic datasets.
Abstract
Rapid advances in sensor, wireless communication, cloud computing and data science have brought unprecedented amount of data to assist transportation engineers and researchers in making better decisions. However, traffic data in reality often has corrupted or incomplete values due to detector and communication malfunctions. Data imputation is thus required to ensure the effectiveness of downstream data-driven applications. To this end, numerous tensor-based methods treating the imputation problem as the low-rank tensor completion (LRTC) have been attempted in previous works. To tackle rank minimization, which is at the core of the LRTC, most of aforementioned methods utilize the tensor nuclear norm (NN) as a convex surrogate for the minimization. However, the over-relaxation issue in NN refrains it from desirable performance in practice. In this paper, we define an innovative nonconvex…
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