TL;DR
WEASEL 2.0 introduces a fast, memory-efficient dictionary-based method for time series classification that outperforms previous dictionary approaches and rivals state-of-the-art methods in accuracy.
Contribution
It presents WEASEL 2.0, a novel TSC method combining dilation and hyper-parameter ensembling to improve accuracy and reduce memory footprint.
Findings
Outperforms previous dictionary methods in accuracy
Achieves highest median accuracy on UCR benchmark
Performs best in 5 out of 12 problem classes
Abstract
A time series is a sequence of sequentially ordered real values in time. Time series classification (TSC) is the task of assigning a time series to one of a set of predefined classes, usually based on a model learned from examples. Dictionary-based methods for TSC rely on counting the frequency of certain patterns in time series and are important components of the currently most accurate TSC ensembles. One of the early dictionary-based methods was WEASEL, which at its time achieved SotA results while also being very fast. However, it is outperformed both in terms of speed and accuracy by other methods. Furthermore, its design leads to an unpredictably large memory footprint, making it inapplicable for many applications. In this paper, we present WEASEL 2.0, a complete overhaul of WEASEL based on two recent advancements in TSC: Dilation and ensembling of randomized hyper-parameter…
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Taxonomy
MethodsSPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings
