2022
DOI: 10.48550/arxiv.2209.07798
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DBT-DMAE: An Effective Multivariate Time Series Pre-Train Model under Missing Data

Abstract: Multivariate time series(MTS) is a universal data type related to many practical applications. However, MTS suffers from missing data problems, which leads to degradation or even collapse of the downstream tasks, such as prediction and classification. The concurrent missing data handling procedures could inevitably arouse the biased estimation and redundancy-training problem when encountering multiple downstream tasks. This paper presents a universally applicable MTS pre-train model, DBT-DMAE, to conquer the a… Show more

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