NRTSI: Non-Recurrent Time Series Imputation
Time series imputation is a fundamental task for understanding time series with missing data. Existing methods either do not directly handle irregularly-sampled data or degrade severely with sparsely observed data. In this work, we reformulate time series as permutation-equivariant sets and propose...
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Zusammenfassung: | Time series imputation is a fundamental task for understanding time series
with missing data. Existing methods either do not directly handle
irregularly-sampled data or degrade severely with sparsely observed data. In
this work, we reformulate time series as permutation-equivariant sets and
propose a novel imputation model NRTSI that does not impose any recurrent
structures. Taking advantage of the permutation equivariant formulation, we
design a principled and efficient hierarchical imputation procedure. In
addition, NRTSI can directly handle irregularly-sampled time series, perform
multiple-mode stochastic imputation, and handle data with partially observed
dimensions. Empirically, we show that NRTSI achieves state-of-the-art
performance across a wide range of time series imputation benchmarks. |
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DOI: | 10.48550/arxiv.2102.03340 |