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Poster

VeriX: Towards Verified Explainability of Deep Neural Networks

Min Wu · Haoze Wu · Clark Barrett

Great Hall & Hall B1+B2 (level 1) #1511

Abstract:

We present VeriX (Verified eXplainability), a system for producing optimal robust explanations and generating counterfactuals along decision boundaries of machine learning models. We build such explanations and counterfactuals iteratively using constraint solving techniques and a heuristic based on feature-level sensitivity ranking. We evaluate our method on image recognition benchmarks and a real-world scenario of autonomous aircraft taxiing.

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