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Neural Canonical Polyadic Factorization for Traffic Analysis

18 June 2025
Yikai Hou
Peng Tang
ArXiv (abs)PDFHTML
Main:5 Pages
2 Figures
Bibliography:3 Pages
Abstract

Modern intelligent transportation systems rely on accurate spatiotemporal traffic analysis to optimize urban mobility and infrastructure resilience. However, pervasive missing data caused by sensor failures and heterogeneous sensing gaps fundamentally hinders reliable traffic modeling. This paper proposes a Neural Canonical Polyadic Factorization (NCPF) model that synergizes low-rank tensor algebra with deep representation learning for robust traffic data imputation. The model innovatively embeds CP decomposition into neural architecture through learnable embedding projections, where sparse traffic tensors are encoded into dense latent factors across road segments, time intervals, and mobility metrics. A hierarchical feature fusion mechanism employs Hadamard products to explicitly model multilinear interactions, while stacked multilayer perceptron layers nonlinearly refine these representations to capture complex spatiotemporal couplings. Extensive evaluations on six urban traffic datasets demonstrate NCPF's superiority over six state-of-the-art baselines. By unifying CP decomposition's interpretable factor analysis with neural network's nonlinear expressive power, NCPF provides a principled yet flexible approaches for high-dimensional traffic data imputation, offering critical support for next-generation transportation digital twins and adaptive traffic control systems.

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@article{hou2025_2506.15079,
  title={ Neural Canonical Polyadic Factorization for Traffic Analysis },
  author={ Yikai Hou and Peng Tang },
  journal={arXiv preprint arXiv:2506.15079},
  year={ 2025 }
}
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