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When stakes are high: Balancing accuracy and transparency with Model-Agnostic Interpretable Data-driven suRRogates

Roel Henckaerts, Katrien Antonio, Marie‐Pier Côté

2022Expert Systems with Applications26 citationsDOI

Topics & Concepts

Categorical variableComputer scienceFeature selectionBlack boxSurrogate modelFeature engineeringGeneralized linear modelTransparency (behavior)Decision treeMachine learningSegmentationGradient boostingArtificial intelligenceData miningBoosting (machine learning)Variable (mathematics)Random forestMathematicsDeep learningMathematical analysisComputer securityExplainable Artificial Intelligence (XAI)Machine Learning in HealthcareMachine Learning and Data Classification
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