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Label-Efficient Time Series Representation Learning: A Review

Emadeldeen Eldele, Mohamed Ragab, Zhenghua Chen, Min Wu, Chee Keong Kwoh, Xiaoli Li

2024IEEE Transactions on Artificial Intelligence35 citationsDOI

Abstract

Label-efficient time series representation learning, which aims to learn effective representations with limited labeled data, is crucial for deploying deep learning models in real-world applications. To address the scarcity of labeled time series data, various strategies, e.g., transfer learning, self-supervised learning, and semisupervised learning, have been developed. In this survey, we introduce a novel taxonomy for the first time, categorizing existing approaches as in-domain or cross domain based on their reliance on external data sources or not. Furthermore, we present a review of the recent advances in each strategy, conclude the limitations of current methodologies, and suggest future research directions that promise further improvements in the field.

Topics & Concepts

Series (stratigraphy)Representation (politics)Computer scienceArtificial intelligenceMachine learningBiologyPolitical sciencePaleontologyPoliticsLawTime Series Analysis and Forecasting
Label-Efficient Time Series Representation Learning: A Review | Litcius