2022
DOI: 10.32628/cseit22856
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Membership Inference Attacks on Machine Learning Model

Abstract: Machine learning(ML) models today are vulnerable to several types of attacks. In this work, we will study a category of attack known as membership inference attack and show how ML models are susceptible to leaking secure information under such attacks. Given a data record and a black box access to a ML model, we present a framework to deduce whether the data record was part of the model’s training dataset or not. We achieve this objective by creating an attack ML model which learns to differentiate the target … Show more

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