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ImputeFormer: Low Rankness-Induced Transformers for Generalizable Spatiotemporal Imputation

About

Missing data is a pervasive issue in both scientific and engineering tasks, especially for the modeling of spatiotemporal data. This problem attracts many studies to contribute to data-driven solutions. Existing imputation solutions mainly include low-rank models and deep learning models. The former assumes general structural priors but has limited model capacity. The latter possesses salient features of expressivity but lacks prior knowledge of the underlying spatiotemporal structures. Leveraging the strengths of both two paradigms, we demonstrate a low rankness-induced Transformer to achieve a balance between strong inductive bias and high model expressivity. The exploitation of the inherent structures of spatiotemporal data enables our model to learn balanced signal-noise representations, making it generalizable for a variety of imputation problems. We demonstrate its superiority in terms of accuracy, efficiency, and versatility in heterogeneous datasets, including traffic flow, solar energy, smart meters, and air quality. Promising empirical results provide strong conviction that incorporating time series primitives, such as low-rankness, can substantially facilitate the development of a generalizable model to approach a wide range of spatiotemporal imputation problems.

Tong Nie, Guoyang Qin, Wei Ma, Yuewen Mei, Jian Sun• 2023

Related benchmarks

TaskDatasetResultRank
Time Series ImputationWeather
MAE0.053
120
Time Series ImputationETTm1
MSE0.086
110
Time Series ImputationETTh1
MSE0.223
86
Time Series ImputationETTm2
MSE0.151
83
Time Series ImputationETTh2
MSE0.429
65
Time Series ImputationTime-series Datasets Average (test)
MSE0.098
48
ImputationPhysioNet Natural (80%) + Additional Missing 2012
MSE0.078
45
Time Series ImputationETTh1 (test)
MSE0.063
32
Time Series ImputationETTm1 (test)
MSE0.036
32
Time Series ImputationWeather (test)
MSE0.04
32
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