Publication | Open Access
You shouldn’t trust me: Learning models which conceal unfairness from multiple explanation methods.
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Citations
12
References
2020
Year
Artificial IntelligenceEngineeringMachine LearningInformation SecurityVerificationAi SafetyMachine Learning ModelsEx- Planation Attack’ T TrustSensitive FeatureLearning ModelsData ScienceBiasAdversarial Machine LearningInterpretabilityMultiple Explanation MethodsCognitive ScienceTrustworthy Artificial IntelligenceAlgorithmic BiasMedicineData PrivacyAlgorithmic TransparencyComputer ScienceTrust In Artificial IntelligenceData SecurityTrustworthy AiExplanation-based LearningAlgorithmic FairnessModel InterpretabilityDecision ScienceExplainable Ai
Transparency of algorithmic systems is an important area of research, which has been discussed as a way for end-users and regulators to develop appropriate trust in machine learning models. One popular approach, LIME [23], even suggests that model expla- nations can answer the question “Why should I trust you?”. Here we show a straightforward method for modifying a pre-trained model to manipulate the output of many popular feature importance explana- tion methods with little change in accuracy, thus demonstrating the danger of trusting such explanation methods. We show how this ex- planation attack can mask a model’s discriminatory use of a sensitive feature, raising strong concerns about using such explanation meth- ods to check fairness of a model.
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