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PLunch: Proving Data-Poisoning Robustness in Decision Trees
Sankha Narayan Guria
Monday, March 2, 2020, 12:00-1:00 pm Calendar
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Abstract

Machine learning models are brittle, and small changes in the training data can result in different predictions. We study the problem of proving that a prediction is robust to data poisoning, where an attacker can inject a number of malicious elements into the training set to influence the learned model. We target decision-tree models, a popular and simple class of machine learning models that underlies many complex learning techniques. We present a sound verification technique based on abstract interpretation and implement it in a tool called Antidote. Antidote abstractly trains decision trees for an intractably large space of possible poisoned datasets. Due to the soundness of our abstraction, Antidote can produce proofs that, for a given input, the corresponding prediction would not have changed had the training set been tampered with or not. We demonstrate the effectiveness of Antidote on a number of popular datasets

Paper available at: https://arxiv.org/abs/1912.00981

This talk is organized by Sankha Narayan Guria