cs.AI updates on arXiv.org 08月21日
ERIS: An Energy-Guided Feature Disentanglement Framework for Out-of-Distribution Time Series Classification
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本文提出ERIS框架,旨在解决时序分类在分布外数据上的可靠性问题,通过引入能量引导校准机制、权重级正交策略和辅助对抗训练,实现引导和可靠的特征解耦,实验结果表明ERIS在四个基准上平均提升了4.04%的准确率。

arXiv:2508.14134v1 Announce Type: cross Abstract: An ideal time series classification (TSC) should be able to capture invariant representations, but achieving reliable performance on out-of-distribution (OOD) data remains a core obstacle. This obstacle arises from the way models inherently entangle domain-specific and label-relevant features, resulting in spurious correlations. While feature disentanglement aims to solve this, current methods are largely unguided, lacking the semantic direction required to isolate truly universal features. To address this, we propose an end-to-end Energy-Regularized Information for Shift-Robustness (\textbf{ERIS}) framework to enable guided and reliable feature disentanglement. The core idea is that effective disentanglement requires not only mathematical constraints but also semantic guidance to anchor the separation process. ERIS incorporates three key mechanisms to achieve this goal. Specifically, we first introduce an energy-guided calibration mechanism, which provides crucial semantic guidance for the separation, enabling the model to self-calibrate. Additionally, a weight-level orthogonality strategy enforces structural independence between domain-specific and label-relevant features, thereby mitigating their interference. Moreover, an auxiliary adversarial training mechanism enhances robustness by injecting structured perturbations. Experiments demonstrate that ERIS improves upon state-of-the-art baselines by an average of 4.04% accuracy across four benchmarks.

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时序分类 特征解耦 ERIS框架
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