Contrastive Learning Is Not Optimal for Quasiperiodic Time Series

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Abstract

Despite recent advancements in Self-Supervised Learning (SSL) for time series analysis, a noticeable gap persists between the anticipated achievements and actual performance. While these methods have demonstrated formidable generalization capabilities with minimal labels in various domains, their effectiveness in distinguishing between different classes based on a limited number of annotated records is notably lacking. Our hypothesis attributes this bottleneck to the prevalent use of Contrastive Learning, a shared training objective in previous state-of-the-art (SOTA) methods. By mandating distinctiveness between representations for negative pairs drawn from separate records, this approach compels the model to encode unique record-based patterns but simultaneously neglects changes occurring across the entire record. To overcome this challenge, we introduce Distilled Embedding for Almost-Periodic Time Series (DEAPS) in this paper, offering a non-contrastive method tailored for quasiperiodic time series, such as electrocardiogram (ECG) data. By avoiding the use of negative pairs, we not only mitigate the model's blindness to temporal changes but also enable the integration of a “Gradual Loss (Lgra)” function. This function guides the model to effectively capture dynamic patterns evolving throughout the record. The outcomes are promising, as DEAPS demonstrates a notable improvement of +10% over existing SOTA methods when just a few annotated records are presented to fit a Machine Learning (ML) model based on the learned representation.

Original languageEnglish
Title of host publicationProceedings of the 33rd International Joint Conference on Artificial Intelligence
EditorsKate Larson
PublisherInternational Joint Conferences on Artificial Intelligence Organization
Publication date2024
Pages3661-3668
ISBN (Electronic)9781956792041
Publication statusPublished - 2024
Event33rd International Joint Conference on Artificial Intelligence
- Jeju, Korea, Republic of
Duration: 3 Aug 20249 Aug 2024
Conference number: 33

Conference

Conference33rd International Joint Conference on Artificial Intelligence
Number33
Country/TerritoryKorea, Republic of
CityJeju
Period03/08/202409/08/2024
SeriesIJCAI International Joint Conference on Artificial Intelligence
ISSN1045-0823

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