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RDIS: Random Drop Imputation with Self-Training for Incomplete Time Series Data

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arxiv 2010.10075 v2 pith:RZKS5E6A submitted 2020-10-20 cs.LG stat.ML

RDIS: Random Drop Imputation with Self-Training for Incomplete Time Series Data

classification cs.LG stat.ML
keywords valuesimputationmissingrdisdatamodelsdroprandom
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Time-series data with missing values are commonly encountered in many fields, such as healthcare, meteorology, and robotics. The imputation aims to fill the missing values with valid values. Most imputation methods trained the models implicitly because missing values have no ground truth. In this paper, we propose Random Drop Imputation with Self-training (RDIS), a novel training method for time-series data imputation models. In RDIS, we generate extra missing values by applying a random drop on the observed values in incomplete data. We can explicitly train the imputation models by filling in the randomly dropped values. In addition, we adopt self-training with pseudo values to exploit the original missing values. To improve the quality of pseudo values, we set the threshold and filter them by calculating the entropy. To verify the effectiveness of RDIS on the time series imputation, we test RDIS to various imputation models and achieve competitive results on two real-world datasets.

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