This repository contains the necessary code to generate a critical difference diagram based on the Wilcoxon-Holm method to detect pairwise significance.
By running the python3 main.py
you will generate a critical difference diagram with Wilcoxon-Holm post-hoc analysis for the data present in the example.csv file.
First the Friedman test is performed to reject the null hypothesis, we then proceed with a post-hoc analysis based on the Wilcoxon-Holm method.
We can clearly see how on average clf3
and clf5
were the best algorithms over the 15 datasets.
A thick horizontal line groups a set of classifiers that are not significantly different.
In this paper we used the critical difference diagram to compare the recent deep learning models for time series classification where we evaluated 9 different architectures on 85 different datasets from the UCR/UEA archive.
Check out the code!
In this paper we used the critical difference diagram to show how ensembling hybrid architectures will allow deep learning models to reach even better accuracy when evaluated on 85 different datasets from the UCR/UEA archive.
Check out the code!
To run this code you will need the following python packages:
If you re-use this work, please cite:
@article{IsmailFawaz2018deep,
Title = {Deep learning for time series classification: a review},
Author = {Ismail Fawaz, Hassan and Forestier, Germain and Weber, Jonathan and Idoumghar, Lhassane and Muller, Pierre-Alain},
journal = {Data Mining and Knowledge Discovery},
Year = {2019},
volume = {33},
number = {4},
pages = {917--963},
}