We study the problem of formally and automatically verifying robustness properties of decision tree ensemble classifiers such as random forests and gradient boosted decision tree models. A recent stream of works showed how abstract interpretation, which is ubiquitously used in static program analysis, can be successfully deployed to formally verify (deep) neural networks. In this work we push forward this line of research by designing a general and principled abstract interpretation-based framework for the formal verification of robustness and stability properties of decision tree ensemble models. Our abstract interpretation-based method may induce complete robustness checks of standard adversarial perturbations and output concrete adversar...
Decision trees and random forests are common classifiers with widespread use. In this paper, we deve...
An ensemble is viewed as a machine learning system that combines multiple models to work collectivel...
Classification is a process where a classifier predicts a class label to an object using the set of ...
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 ...
© 2019 Neural information processing systems foundation. All rights reserved. We study the robustnes...
In this paper we criticize the robustness measure traditionally employed to assess the performance o...
Recent advances in machine learning and artificial intelligence are now beingconsidered in safety-cr...
We study the problem of formally verifying individual fairness of decision tree ensembles, as well a...
Recently it has been shown that many machine learning models are vulnerable to adversarial examples:...
In the presence of data and computational resources, machine learning can be used to synthesize soft...
We propose a robust decision tree induction method that mitigates the problems of instability and p...
Although machine learning has achieved great success in numerous complicated tasks, many machine lea...
Machine learning is used for security purposes, to differ between the benign and the malicious. Wher...
Machine learning algorithms, however effective, are known to be vulnerable in adversarial scenarios ...
Decision trees and random forests are common classifiers with widespread use. In this paper, we deve...
An ensemble is viewed as a machine learning system that combines multiple models to work collectivel...
Classification is a process where a classifier predicts a class label to an object using the set of ...
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 ...
© 2019 Neural information processing systems foundation. All rights reserved. We study the robustnes...
In this paper we criticize the robustness measure traditionally employed to assess the performance o...
Recent advances in machine learning and artificial intelligence are now beingconsidered in safety-cr...
We study the problem of formally verifying individual fairness of decision tree ensembles, as well a...
Recently it has been shown that many machine learning models are vulnerable to adversarial examples:...
In the presence of data and computational resources, machine learning can be used to synthesize soft...
We propose a robust decision tree induction method that mitigates the problems of instability and p...
Although machine learning has achieved great success in numerous complicated tasks, many machine lea...
Machine learning is used for security purposes, to differ between the benign and the malicious. Wher...
Machine learning algorithms, however effective, are known to be vulnerable in adversarial scenarios ...
Decision trees and random forests are common classifiers with widespread use. In this paper, we deve...
An ensemble is viewed as a machine learning system that combines multiple models to work collectivel...
Classification is a process where a classifier predicts a class label to an object using the set of ...