Prototype-Guided Classification Sub-Task Decoupling Framework: Enhancing Generalization and Interpretability for Multivariate Time Series
Xianhao Song, Yuang Zhang, Yuqi She, Liping Wang, Xuemin Lin

TL;DR
PDFTime introduces a prototype-guided, multi-stage decision framework for multivariate time series classification, improving interpretability and generalization while achieving state-of-the-art accuracy.
Contribution
It reformulates TSC as a decoupled, multi-stage similarity reasoning process using learned prototypes, breaking the traditional direct feature-to-label paradigm.
Findings
Achieves state-of-the-art performance on UEA and UCR benchmarks.
Secures top-1 accuracy on 80 out of 128 UCR datasets.
Outperforms recent strong baselines in consistency and generalization.
Abstract
Time Series Classification (TSC) is a long-standing research problem that has gained increasing attention in recent years with the rapid growth of large-scale temporal data. Despite substantial progress enabled by deep learning, designing TSC models that are both accurate and interpretable remains a challenging task. Many existing approaches adopt a direct feature-to-label classification paradigm, by collapsing high-dimensional temporal embeddings into class logits via a single linear projection (often after global pooling), the paradigm conflates feature extraction and decision logic into an inseparable mapping. To address these limitations, we propose PDFTime, a prototype-guided framework that reformulates time series classification as a multi-stage decision process. Instead of direct feature-to-label mapping, PDFTime leverages learned prototypes to approximate class-conditional…
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