Simulated Data Experiments for Time Series Classification Part 1: Accuracy Comparison with Default Settings
Anthony Bagnall, Aaron Bostrom, James Large, Jason Lines

TL;DR
This paper uses simulated data to compare the performance of various time series classification algorithms based on different data representations, providing insights into their strengths and limitations.
Contribution
It introduces data simulators for different feature spaces in TSC and evaluates algorithm performance, challenging simplified assumptions and highlighting ensemble methods' effectiveness.
Findings
Ensemble approach (HIVE-COTE) outperforms others on unknown data representations.
Surprising results challenge prior beliefs about classifier performance.
Simulators enable controlled testing of hypotheses in TSC.
Abstract
There are now a broad range of time series classification (TSC) algorithms designed to exploit different representations of the data. These have been evaluated on a range of problems hosted at the UCR-UEA TSC Archive (www.timeseriesclassification.com), and there have been extensive comparative studies. However, our understanding of why one algorithm outperforms another is still anecdotal at best. This series of experiments is meant to help provide insights into what sort of discriminatory features in the data lead one set of algorithms that exploit a particular representation to be better than other algorithms. We categorise five different feature spaces exploited by TSC algorithms then design data simulators to generate randomised data from each representation. We describe what results we expected from each class of algorithm and data representation, then observe whether these prior…
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Taxonomy
TopicsTime Series Analysis and Forecasting · Anomaly Detection Techniques and Applications · Stock Market Forecasting Methods
