How does this interaction affect me? Interpretable attribution for feature interactions

19 Jun 2020Michael TsangSirisha RambhatlaYan Liu

Machine learning transparency calls for interpretable explanations of how inputs relate to predictions. Feature attribution is a way to analyze the impact of features on predictions... (read more)

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