Conference Proceedings

StatioCL: Contrastive Learning for Time Series via Non-Stationary and Temporal Contrast

Y Wu, T Dang, D Spathis, H Jia, C Mascolo

International Conference on Information and Knowledge Management Proceedings | ACM | Published : 2024

Open access

Abstract

Contrastive learning (CL) has emerged as a promising approach for representation learning in time series data by embedding similar pairs closely while distancing dissimilar ones. However, existing CL methods often introduce false negative pairs (FNPs) by neglecting inherent characteristics and then randomly selecting distinct segments as dissimilar pairs, leading to erroneous representation learning, reduced model performance, and overall inefficiency. To address these issues, we systematically define and categorize FNPs in time series into semantic false negative pairs and temporal false negative pairs for the first time: the former arising from overlooking similarities in label categories,..

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University of Melbourne Researchers