Jan. 31, 2024, 3:43 p.m. | Weronika Hryniewska-Guzik Bartosz Sawicki Przemys{\l}aw Biecek

cs.CV updates on arXiv.org arxiv.org

This paper presents a comprehensive comparative analysis of explainable artificial intelligence (XAI) ensembling methods. Our research brings three significant contributions. Firstly, we introduce a novel ensembling method, NormEnsembleXAI, that leverages minimum, maximum, and average functions in conjunction with normalization techniques to enhance interpretability. Secondly, we offer insights into the strengths and weaknesses of XAI ensemble methods. Lastly, we provide a library, facilitating the practical implementation of XAI ensembling, thus promoting the adoption of transparent and interpretable deep learning models.

analysis artificial artificial intelligence comparative analysis cs.ai cs.cv cs.lg ensemble explainable artificial intelligence functions insights intelligence interpretability normalization novel paper research xai

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