2022
DOI: 10.48550/arxiv.2204.03456
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Few-Shot Forecasting of Time-Series with Heterogeneous Channels

Abstract: Learning complex time series forecasting models usually requires a large amount of data, as each model is trained from scratch for each task/data set. Leveraging learning experience with similar datasets is a well-established technique for classification problems called few-shot classification. However, existing approaches cannot be applied to timeseries forecasting because i) multivariate time-series datasets have different channels and ii) forecasting is principally different from classification. In this pap… Show more

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