LGAIJul 13, 2025

Bridging Neural Networks and Dynamic Time Warping for Adaptive Time Series Classification

arXiv:2507.09826v1h-index: 17ECML/PKDD
Originality Highly original
AI Analysis

This work addresses the challenge of limited labeled data and lack of interpretability in time series classification for applications requiring transparency and adaptability.

The paper tackled the problem of time series classification in cold-start scenarios by bridging neural networks and dynamic time warping, resulting in a model that significantly outperforms previous approaches in low-resource settings and remains competitive in rich-resource settings.

Neural networks have achieved remarkable success in time series classification, but their reliance on large amounts of labeled data for training limits their applicability in cold-start scenarios. Moreover, they lack interpretability, reducing transparency in decision-making. In contrast, dynamic time warping (DTW) combined with a nearest neighbor classifier is widely used for its effectiveness in limited-data settings and its inherent interpretability. However, as a non-parametric method, it is not trainable and cannot leverage large amounts of labeled data, making it less effective than neural networks in rich-resource scenarios. In this work, we aim to develop a versatile model that adapts to cold-start conditions and becomes trainable with labeled data, while maintaining interpretability. We propose a dynamic length-shortening algorithm that transforms time series into prototypes while preserving key structural patterns, thereby enabling the reformulation of the DTW recurrence relation into an equivalent recurrent neural network. Based on this, we construct a trainable model that mimics DTW's alignment behavior. As a neural network, it becomes trainable when sufficient labeled data is available, while still retaining DTW's inherent interpretability. We apply the model to several benchmark time series classification tasks and observe that it significantly outperforms previous approaches in low-resource settings and remains competitive in rich-resource settings.

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