Publication | Open Access
"How do I fool you?"
207
Citations
14
References
2020
Year
Artificial IntelligenceEngineeringMachine LearningInformation ForensicsCommunicationData ScienceBiasAdversarial Machine LearningInterpretabilityBlack BoxPredictive AnalyticsData PrivacyComputer ScienceBias DetectionProblematic Black BoxArtsDeception DetectionExplainable AiBlack Boxes
As machine learning black boxes are increasingly being deployed in critical domains such as healthcare and criminal justice, there has been a growing emphasis on developing techniques for explaining these black boxes in a human interpretable manner. There has been recent concern that a high-fidelity explanation of a black box ML model may not accurately reflect the biases in the black box. As a consequence, explanations have the potential to mislead human users into trusting a problematic black box. In this work, we rigorously explore the notion of misleading explanations and how they influence user trust in black box models. Specifically, we propose a novel theoretical framework for understanding and generating misleading explanations, and carry out a user study with domain experts to demonstrate how these explanations can be used to mislead users. Our work is the first to empirically establish how user trust in black box models can be manipulated via misleading explanations.
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