Improving Stroke Trace Classification Explainability Through Counterexamples

Research output: Contribution to conferencePaperpeer-review

Abstract

Deep learning process trace classification is proving powerful in several application domains, including medical ones; however, classification results are typically not explainable, an issue which is particularly relevant in medicine. In our recent work we tackled this problem, by proposing trace saliency maps, a novel tool able to highlight what trace activities are particularly significant for the classification task. A trace saliency map is built by generating artificial perturbations of the trace at hand that are classified in the same class as the original one, called examples. In this paper, we investigate the role of counterexamples (i.e., artificial perturbations that are classified in a different class with respect to the original trace) in refining trace saliency map information, thus improving explainability. We test the approach in the domain of stroke.
Original languageEnglish
Pages125-129
Number of pages5
DOIs
Publication statusPublished - 2023
Event21st International Conference on Artificial Intelligence in Medicine, AIME 2023 - Portorož, Slovenia
Duration: 1 Jan 2023 → …

Conference

Conference21st International Conference on Artificial Intelligence in Medicine, AIME 2023
CityPortorož, Slovenia
Period1/01/23 → …

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