Dataset: Evaluation of post-hoc interpretability methods in time-series classification
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下载链接:
https://zenodo.org/record/7534769
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资源简介:
This repository contains the dataset, trained models as well as results for the article Evaluation of post-hoc interpretability methods in time-series classification.
The code to reproduce the results presented in the article is available on GitHub. More details on the data and results can be found in the article.
Files:
datasets.zip: Include the three datasets used in the article:
ECG: Processed version of the CPSC dataset from Classification of 12-lead ECGs: the PhysioNet - Computing in Cardiology Challenge 2020.
fordA: Dataset from the UCR Time Series Classification Archive
synthetic: Synthetic dataset developed specifically for the purpose of the article
trained_models.zip: Include CNN, transformer and bi-lstm trained on the three datasets
results_paper.zip: Computed relevance and evaluation metrics for the trained models
model_interpretability: Include the relevance computed using the different interpretability methods as well as the computed metrics for each method
summary_results: Summary of the evaluation metrics across all interpretability methods for each dataset as well as an excel file summarising the metrics across all datasets.
创建时间:
2023-01-20



