2022
DOI: 10.48550/arxiv.2202.04770
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Unsupervised Time-Series Representation Learning with Iterative Bilinear Temporal-Spectral Fusion

Abstract: Unsupervised/self-supervised time series representation learning is a challenging problem because of its complex dynamics and sparse annotations. Existing works mainly adopt the framework of contrastive learning with the time-based augmentation techniques to sample positives and negatives for contrastive training. Nevertheless, they mostly use segment-level augmentation derived from time slicing, which may bring about sampling bias and incorrect optimization with false negatives due to the loss of global conte… Show more

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