# TS-CHIEF: A Scalable and Accurate Forest Algorithm for Time Series   Classification

**Authors:** Ahmed Shifaz, Charlotte Pelletier, Francois Petitjean, Geoffrey I., Webb

arXiv: 1906.10329 · 2021-02-09

## TL;DR

TS-CHIEF is a new scalable ensemble algorithm for time series classification that achieves state-of-the-art accuracy while significantly reducing training time compared to existing methods like HIVE-COTE.

## Contribution

Introduces TS-CHIEF, a novel ensemble method that combines effective embeddings and tree classifiers for scalable, accurate time series classification.

## Key findings

- Achieves state-of-the-art accuracy on 85 UCR datasets.
- Trains on 130,000 time series in 2 days, outperforming existing algorithms in scalability.
- Reduces training time from days to hours while maintaining high accuracy.

## Abstract

Time Series Classification (TSC) has seen enormous progress over the last two decades. HIVE-COTE (Hierarchical Vote Collective of Transformation-based Ensembles) is the current state of the art in terms of classification accuracy. HIVE-COTE recognizes that time series data are a specific data type for which the traditional attribute-value representation, used predominantly in machine learning, fails to provide a relevant representation. HIVE-COTE combines multiple types of classifiers: each extracting information about a specific aspect of a time series, be it in the time domain, frequency domain or summarization of intervals within the series. However, HIVE-COTE (and its predecessor, FLAT-COTE) is often infeasible to run on even modest amounts of data. For instance, training HIVE-COTE on a dataset with only 1,500 time series can require 8 days of CPU time. It has polynomial runtime with respect to the training set size, so this problem compounds as data quantity increases. We propose a novel TSC algorithm, TS-CHIEF (Time Series Combination of Heterogeneous and Integrated Embedding Forest), which rivals HIVE-COTE in accuracy but requires only a fraction of the runtime. TS-CHIEF constructs an ensemble classifier that integrates the most effective embeddings of time series that research has developed in the last decade. It uses tree-structured classifiers to do so efficiently. We assess TS-CHIEF on 85 datasets of the University of California Riverside (UCR) archive, where it achieves state-of-the-art accuracy with scalability and efficiency. We demonstrate that TS-CHIEF can be trained on 130k time series in 2 days, a data quantity that is beyond the reach of any TSC algorithm with comparable accuracy.

## Full text

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## Figures

23 figures with captions in the complete paper: https://tomesphere.com/paper/1906.10329/full.md

## References

60 references — full list in the complete paper: https://tomesphere.com/paper/1906.10329/full.md

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Source: https://tomesphere.com/paper/1906.10329