Explainability has become crucial in artificial intelligence studies and, as the complexity of the model increases, so does the complexity of its explanation. However, the higher the complexity of the problem, the higher the amount of information it may provide, and this information can be exploited to generate a more precise explanation of how the model works. One of the most valuable ways to recover such input–output relation is to extract counterfactual explanations that allow us to find minimal changes from an observation to another one belonging to a different class. In this article, we propose a novel methodology to extract multiple counterfactual explanations [MUltiCounterfactual via Halton sampling (MUCH)] from an original multiclass support vector data description algorithm. To evaluate the performance of the proposed method, we extracted a set of counterfactual explanations from three state-of-the-art datasets achieving satisfactory results that pave the way to a range of real-world applications
Multi-Class Counterfactual Explanations using Support Vector Data Description
Carlevaro, Alberto
Co-primo
;Lenatti, MartaCo-primo
;Paglialonga, AlessiaPenultimo
;Mongelli, MaurizioUltimo
2024
Abstract
Explainability has become crucial in artificial intelligence studies and, as the complexity of the model increases, so does the complexity of its explanation. However, the higher the complexity of the problem, the higher the amount of information it may provide, and this information can be exploited to generate a more precise explanation of how the model works. One of the most valuable ways to recover such input–output relation is to extract counterfactual explanations that allow us to find minimal changes from an observation to another one belonging to a different class. In this article, we propose a novel methodology to extract multiple counterfactual explanations [MUltiCounterfactual via Halton sampling (MUCH)] from an original multiclass support vector data description algorithm. To evaluate the performance of the proposed method, we extracted a set of counterfactual explanations from three state-of-the-art datasets achieving satisfactory results that pave the way to a range of real-world applicationsFile | Dimensione | Formato | |
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Carlevaro_MC-SVDD_method_IEEE-TAI_2024_published-version.pdf
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Descrizione: Multi-class counterfactual explanations - IEEE TAI 2024
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