Explanations based on Item Response Theory (eXirt): A model-specific method to explain tree-ensemble model in trust perspective
José de Sousa Ribeiro Filho, Lucas F. F. Cardoso, Raíssa Lorena Silva da Silva, Nikolas Carneiro, Vitor Cirilo Araujo Santos, Ronnie Alves
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Explanations based on Item Response Theory (eXirt): A model-specific method to explain tree-ensemble model in trust perspective focuses on computer science.
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Evidence disclosure
Evidence graph: 2 refs, 1 links.
Utility signals: depth 65/100, grounding 58/100, status medium.
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Research context
6
Citations
81
References
Tasks
Computer science, Relevance (law), Perspective (graphical), Random forest, Tree (set theory), Ensemble learning, Context (archaeology), Feature (linguistics)
Methods
None detected
Domains
Boosting (machine learning), Machine learning, Artificial intelligence
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