© 2019 Neural information processing systems foundation. All rights reserved. We study the robustness verification problem for tree based models, including decision trees, random forests (RFs) and gradient boosted decision trees (GBDTs). Formal robustness verification of decision tree ensembles involves finding the exact minimal adversarial perturbation or a guaranteed lower bound of it. Existing approaches find the minimal adversarial perturbation by a mixed integer linear programming (MILP) problem, which takes exponential time so is impractical for large ensembles. Although this verification problem is NP-complete in general, we give a more precise complexity characterization. We show that there is a simple linear time algorithm for veri...
Machine learning is used for security purposes, to differ between the benign and the malicious. Wher...
Recent advances in machine learning and artificial intelligence are now beingconsidered in safety-cr...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
© 2019 Neural information processing systems foundation. All rights reserved. We study the robustnes...
We study the problem of formally and automatically verifying robustness properties of decision tree ...
We study the problem of formally and automatically verifying robustness properties of decision tree ...
Although machine learning has achieved great success in numerous complicated tasks, many machine lea...
In this paper we criticize the robustness measure traditionally employed to assess the performance o...
© 2019 by the Author(S). Although adversarial examples and model robustness have been extensively st...
The problem of adversarial robustness has been studied extensively for neural networks. However, for...
In the presence of data and computational resources, machine learning can be used to synthesize soft...
Recently it has been shown that many machine learning models are vulnerable to adversarial examples:...
Decision trees are a popular choice of explainable model, but just like neural networks, they suffer...
We study the problem of formally verifying individual fairness of decision tree ensembles, as well a...
Verifying the robustness of machine learning models against evasion attacks at test time is an impor...
Machine learning is used for security purposes, to differ between the benign and the malicious. Wher...
Recent advances in machine learning and artificial intelligence are now beingconsidered in safety-cr...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
© 2019 Neural information processing systems foundation. All rights reserved. We study the robustnes...
We study the problem of formally and automatically verifying robustness properties of decision tree ...
We study the problem of formally and automatically verifying robustness properties of decision tree ...
Although machine learning has achieved great success in numerous complicated tasks, many machine lea...
In this paper we criticize the robustness measure traditionally employed to assess the performance o...
© 2019 by the Author(S). Although adversarial examples and model robustness have been extensively st...
The problem of adversarial robustness has been studied extensively for neural networks. However, for...
In the presence of data and computational resources, machine learning can be used to synthesize soft...
Recently it has been shown that many machine learning models are vulnerable to adversarial examples:...
Decision trees are a popular choice of explainable model, but just like neural networks, they suffer...
We study the problem of formally verifying individual fairness of decision tree ensembles, as well a...
Verifying the robustness of machine learning models against evasion attacks at test time is an impor...
Machine learning is used for security purposes, to differ between the benign and the malicious. Wher...
Recent advances in machine learning and artificial intelligence are now beingconsidered in safety-cr...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...