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Robust Optimal Classification Trees against Adversarial Examples

Daniël Vos, Sicco Verwer

2022Proceedings of the AAAI Conference on Artificial Intelligence15 citationsDOIOpen Access PDF

Abstract

Decision trees are a popular choice of explainable model, but just like neural networks, they suffer from adversarial examples. Existing algorithms for fitting decision trees robust against adversarial examples are greedy heuristics and lack approximation guarantees. In this paper we propose ROCT, a collection of methods to train decision trees that are optimally robust against user-specified attack models. We show that the min-max optimization problem that arises in adversarial learning can be solved using a single minimization formulation for decision trees with 0-1 loss. We propose such formulations in Mixed-Integer Linear Programming and Maximum Satisfiability, which widely available solvers can optimize. We also present a method that determines the upper bound on adversarial accuracy for any model using bipartite matching. Our experimental results demonstrate that the existing heuristics achieve close to optimal scores while ROCT achieves state-of-the-art scores.

Topics & Concepts

HeuristicsAdversarial systemComputer scienceMathematical optimizationMatching (statistics)Bipartite graphGreedy algorithmSatisfiabilityDecision treeArtificial intelligenceInteger programmingLinear programmingUpper and lower boundsMachine learningAlgorithmMathematicsTheoretical computer scienceGraphStatisticsMathematical analysisAdversarial Robustness in Machine LearningExplainable Artificial Intelligence (XAI)Machine Learning and Data Classification
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