PAITS: Pretraining and Augmentation for Irregularly-Sampled Time Series

TMLR Paper2424 Authors

25 Mar 2024 (modified: 17 Sept 2024)Withdrawn by AuthorsEveryoneRevisionsBibTeXCC BY 4.0
Abstract: Real-world time series data that commonly reflect sequential human behavior are often uniquely irregularly sampled and sparse, with highly nonuniform sampling over time and entities. Yet, commonly-used pretraining and augmentation methods for time series are not specifically designed for such scenarios. In this paper, we present PAITS (Pretraining and Augmentation for Irregularly-sampled Time Series), a framework for identifying suitable pretraining strategies for sparse and irregularly sampled time series datasets. PAITS leverages a novel combination of NLP-inspired pretraining tasks and augmentations, and a random search to identify an effective strategy for a given dataset. We demonstrate that different datasets benefit from different pretraining choices. Compared with prior methods, our approach is better able to consistently improve pretraining across multiple datasets and domains. Our code is attached and will be publicly available.
Submission Length: Regular submission (no more than 12 pages of main content)
Assigned Action Editor: ~Yunhe_Wang1
Submission Number: 2424
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