2021
Conference article  Restricted

Explaining any time series classifier

Guidotti R., Monreale A., Spinnato F., Pedreschi D., Giannotti F.

Explainable AI  Time Series Classification  Exemplars and Counter-Exemplars  Shapelet-based Rules 

We present a method to explain the decisions of black box models for time series classification. The explanation consists of factual and counterfactual shapelet-based rules revealing the reasons for the classification, and of a set of exemplars and counter-exemplars highlighting similarities and differences with the time series under analysis. The proposed method first generates exemplar and counter-exemplar time series in the latent feature space and learns a local latent decision tree classifier. Then, it selects and decodes those respecting the decision rules explaining the decision. Finally, it learns on them a shapelet-tree that reveals the parts of the time series that must, and must not, be contained for getting the returned outcome from the black box. A wide experimentation shows that the proposed method provides faithful, meaningful and interpretable explanations.


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BibTeX entry
@inproceedings{oai:it.cnr:prodotti:445674,
	title = {Explaining any time series classifier},
	author = {Guidotti R. and Monreale A. and Spinnato F. and Pedreschi D. and Giannotti F.},
	doi = {10.1109/cogmi50398.2020.00029},
	year = {2021}
}

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