Actionable Model-Centric Explanations (Student Abstract)
Cecilia Morales, Nicholas Gisolfi, Robert Edman, James Kyle Milller, Artur Dubrawski
[AAAI-22] Student Abstract and Poster Program
Abstract:
We recommend using a model-centric, Boolean Satisfiability (SAT) formalism to obtain useful explanations of trained model behavior, different and complementary to what can be gleaned from LIME and SHAP, popular data-centric explanation tools in Artificial Intelligence (AI).We compare and contrast these methods, and show that data-centric methods may yield brittle explanations of limited practical utility.The model-centric framework, however, can offer actionable insights into risks of using AI models in practice. For critical applications of AI, split-second decision making is best informed by robust explanations that are invariant to properties of data, the capability offered by model-centric frameworks.
Sessions where this paper appears
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Poster Session 3
Fri, February 25 8:45 AM - 10:30 AM (+00:00)
Blue 5
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Poster Session 7
Sat, February 26 4:45 PM - 6:30 PM (+00:00)
Blue 5