Feb. 7, 2024, 5:43 a.m. | Annie Liang Thomas Jemielita Andy Liaw Vladimir Svetnik Lingkang Huang Richard Baumgartner Jason M. Kl

cs.LG updates on arXiv.org arxiv.org

Variable importance plays a pivotal role in interpretable machine learning as it helps measure the impact of factors on the output of the prediction model. Model agnostic methods based on the generation of "null" features via permutation (or related approaches) can be applied. Such analysis is often utilized in pharmaceutical applications due to its ability to interpret black-box models, including tree-based ensembles. A major challenge and significant confounder in variable importance estimation however is the presence of between-feature correlation. Recently, …

analysis applications challenges correlation cs.lg features impact importance machine machine learning null pharmaceutical pivotal prediction ranking role stat.me stat.ml via

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