Intelligently Augmented Contrastive Tensor Factorization: Empowering Multi-dimensional Time Series Classification in Low-Data Environments
Anushiya Arunan, Yan Qin, Xiaoli Li, Yuen Chau

TL;DR
This paper introduces ITA-CTF, a data-efficient framework that combines contrastive tensor factorization and intelligent augmentation to improve multi-dimensional time series classification in low-data settings.
Contribution
It proposes a novel contrastive tensor factorization method with targeted augmentation, enabling better feature learning and classification accuracy with limited data.
Findings
Achieved up to 18.7% performance improvement over benchmarks.
Effectively captures intra-class variations with limited training data.
Enhances class-wise invariance through contrastive learning and augmentation.
Abstract
Classification of multi-dimensional time series from real-world systems require fine-grained learning of complex features such as cross-dimensional dependencies and intra-class variations-all under the practical challenge of low training data availability. However, standard deep learning (DL) struggles to learn generalizable features in low-data environments due to model overfitting. We propose a versatile yet data-efficient framework, Intelligently Augmented Contrastive Tensor Factorization (ITA-CTF), to learn effective representations from multi-dimensional time series. The CTF module learns core explanatory components of the time series (e.g., sensor factors, temporal factors), and importantly, their joint dependencies. Notably, unlike standard tensor factorization (TF), the CTF module incorporates a new contrastive loss optimization to induce similarity learning and class-awareness…
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