Decision trees and random forests are common classifiers with widespread use. In this paper, we develop two protocols for privately evaluating decision trees and random forests. We operate in the standard two-party setting where the server holds a model (either a tree or a forest), and the client holds an input (a feature vector). At the conclusion of the protocol, the client learns only the model’s output on its input and a few generic parameters concerning the model; the server learns nothing. The first protocol we develop provides security against semi-honest adversaries. We then give an extension of the semi-honest protocol that is robust against malicious adversaries. We implement both protocols and show that both variants are able to ...
Random forest is a simple and effective model for ensemble learning with wide potential applications...
We study the problem of formally and automatically verifying robustness properties of decision tree ...
Unlike other decision tree classifiers, Random Forest grows multiple trees which create a forest-lik...
Decision trees are a popular method for a variety of machine learning tasks. A typical application s...
Machine learning classification algorithms, such as decision trees and random forests, are commonly ...
Decision trees are popular machine-learning classification models due to their simplicity and effect...
Decision trees and random forests are widely used classifiers in machine learning. Service providers...
International audienceDecision forests are classical models to efficiently make decision on complex ...
Many data-driven personalized services require that private data of users is scored against a traine...
Machine learning is used for security purposes, to differ between the benign and the malicious. Wher...
The capability to model unkown complex interactions between variables made machine learning a pervas...
We study the problem of formally and automatically verifying robustness properties of decision tree ...
This paper studies how to build a decision tree clas-sifier under the following scenario: a database...
We propose a robust decision tree induction method that mitigates the problems of instability and p...
Privacy-preserving data mining has become an active focus of the research community in the domains w...
Random forest is a simple and effective model for ensemble learning with wide potential applications...
We study the problem of formally and automatically verifying robustness properties of decision tree ...
Unlike other decision tree classifiers, Random Forest grows multiple trees which create a forest-lik...
Decision trees are a popular method for a variety of machine learning tasks. A typical application s...
Machine learning classification algorithms, such as decision trees and random forests, are commonly ...
Decision trees are popular machine-learning classification models due to their simplicity and effect...
Decision trees and random forests are widely used classifiers in machine learning. Service providers...
International audienceDecision forests are classical models to efficiently make decision on complex ...
Many data-driven personalized services require that private data of users is scored against a traine...
Machine learning is used for security purposes, to differ between the benign and the malicious. Wher...
The capability to model unkown complex interactions between variables made machine learning a pervas...
We study the problem of formally and automatically verifying robustness properties of decision tree ...
This paper studies how to build a decision tree clas-sifier under the following scenario: a database...
We propose a robust decision tree induction method that mitigates the problems of instability and p...
Privacy-preserving data mining has become an active focus of the research community in the domains w...
Random forest is a simple and effective model for ensemble learning with wide potential applications...
We study the problem of formally and automatically verifying robustness properties of decision tree ...
Unlike other decision tree classifiers, Random Forest grows multiple trees which create a forest-lik...