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hi Iamp;#39;m Carmen and Iamp;#39;m going to be talking about certification today uh this is Joint work with these wonderful people uh guy Blanc Caleb Koch Jane Lang and the young tan so letamp;#39;s get to it um all right whatamp;#39;s our motivation here we want to explain the behavior of black boxes what does that mean uh we have query access to some unknown function f we put it in X um this black box spins out in f of x and we donamp;#39;t know why um so our goal is given a specific input a specific input X star we want to explain why F outputs what it does on um x-star uh thereamp;#39;s a lot of interest in answering this question from the explainable machine Learning Community um you can imagine why it might be um interesting for machine learning people uh machine learning models are often quite opaque and so being able to come up with simple explanations for why a model does what it does could be quite useful um we focus on local explanations meaning we explain Famp;#39;s