2024
DOI: 10.1007/s10618-024-01036-9
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quant: a minimalist interval method for time series classification

Angus Dempster,
Daniel F. Schmidt,
Geoffrey I. Webb

Abstract: We show that it is possible to achieve the same accuracy, on average, as the most accurate existing interval methods for time series classification on a standard set of benchmark datasets using a single type of feature (quantiles), fixed intervals, and an ‘off the shelf’ classifier. This distillation of interval-based approaches represents a fast and accurate method for time series classification, achieving state-of-the-art accuracy on the expanded set of 142 datasets in the UCR archive with a total compute ti… Show more

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