We introduce PASTA (Perceptual Assessment System for explanaTion of Artificial Intelligence), a novel human-centric framework for evaluating eXplainable AI (XAI) techniques in computer vision. Our first contribution is the creation of the PASTA-dataset, the first large-scale benchmark that spans a diverse set of models and both saliency-based and concept-based explanation methods. This dataset enables robust, comparative analysis of XAI techniques based on human judgment. Our second contribution is an automated, data-driven benchmark that predicts human preferences using the PASTA-dataset. This scoring called PASTA-score offers scalable, reliable, and consistent evaluation aligned with human perception. Additionally, our benchmark allows for comparisons between explanations across different modalities, an aspect previously unaddressed. We then propose to apply our scoring method to probe the interpretability of existing models and to build more human-interpretable XAI methods.

Benchmarking XAI Explanations with Human-Aligned Evaluations / Kazmierczak, R., Azzolin, S., Berthier, E., Hedstrom, A., Delhomme, ., Filliat, D., Bousquet, N., Frehse, G., Mancini, M., Caramiaux, B., Passerini, A., Franchi, G.. - 40:44(2026), pp. 37491-37500. (40th AAAI Conference on Artificial Intelligence, AAAI 2026 sgp 2026) [10.1609/aaai.v40i44.41082].

Benchmarking XAI Explanations with Human-Aligned Evaluations

Azzolin S.;Mancini M.;Passerini A.;
2026-01-01

Abstract

We introduce PASTA (Perceptual Assessment System for explanaTion of Artificial Intelligence), a novel human-centric framework for evaluating eXplainable AI (XAI) techniques in computer vision. Our first contribution is the creation of the PASTA-dataset, the first large-scale benchmark that spans a diverse set of models and both saliency-based and concept-based explanation methods. This dataset enables robust, comparative analysis of XAI techniques based on human judgment. Our second contribution is an automated, data-driven benchmark that predicts human preferences using the PASTA-dataset. This scoring called PASTA-score offers scalable, reliable, and consistent evaluation aligned with human perception. Additionally, our benchmark allows for comparisons between explanations across different modalities, an aspect previously unaddressed. We then propose to apply our scoring method to probe the interpretability of existing models and to build more human-interpretable XAI methods.
2026
Proceedings of the AAAI Conference on Artificial Intelligence
virtuale
Association for the Advancement of Artificial Intelligence
Kazmierczak, R.; Azzolin, S.; Berthier, E.; Hedstrom, A.; Delhomme, ; Filliat, D.; Bousquet, N.; Frehse, G.; Mancini, M.; Caramiaux, B.; Passerini, A....espandi
Benchmarking XAI Explanations with Human-Aligned Evaluations / Kazmierczak, R., Azzolin, S., Berthier, E., Hedstrom, A., Delhomme, ., Filliat, D., Bousquet, N., Frehse, G., Mancini, M., Caramiaux, B., Passerini, A., Franchi, G.. - 40:44(2026), pp. 37491-37500. (40th AAAI Conference on Artificial Intelligence, AAAI 2026 sgp 2026) [10.1609/aaai.v40i44.41082].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11572/494618
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