QUANT: A Minimalist Interval Method for Time Series Classification
About
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 time (training and inference) of less than 15 minutes using a single CPU core.
Angus Dempster, Daniel F. Schmidt, Geoffrey I. Webb• 2023
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Time-series classification | PAMAP2 | -- | 40 | |
| Multivariate Time Series Classification | HandMovementDirection | Accuracy33.78 | 36 | |
| Classification | EthanolConcentration | Accuracy65.77 | 26 | |
| Time-series classification | Pedestrian (test) | Accuracy77.76 | 15 | |
| Time-series classification | FordChallenge | Error Rate6.9 | 14 | |
| Time-series classification | LakeIce | Error Rate0.2 | 14 | |
| Time-series classification | Opportunity | Error Rate13.4 | 14 | |
| Time-series classification | S2Agri 10pc 17 | Error Rate27.1 | 14 | |
| Time-series classification | S2Agri 10pc 34 | Error Rate28.5 | 14 | |
| Time-series classification | Tiselac | Error Rate0.219 | 14 |
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