Machine-learning (ML) enables computers to learn how to recognise patterns, make unintended decisions, or react to a dynamic environment. The effectiveness of trained machines varies because of more suitable ML algorithms or because superior training sets. Although ML algorithms are known and publicly released, training sets may not be reasonably ascertainable and, indeed, may be guarded as trade secrets. In this paper we focus our attention on ML classifiers and on the statistical information that can be unconsciously or maliciously revealed from them. We show that it is possible to infer unexpected but useful information from ML classifiers. In particular, we build a novel meta-classifier and train it to hack other classifiers, obtaining ...
Inference attacks against Machine Learning (ML) models allow adversaries to learn information about ...
Machine learning is being used in a wide range of application domains to discover patterns in large ...
It is known that deep neural networks, trained for the classification of non-sensitive target attrib...
Machine learning (ML) has become a core component of many real-world applications and training data ...
Luis Muñoz-González and Emil C. Lupu, from Imperial College London, explore the vulnerabilities of m...
We introduce a new class of attacks on machine learning models. We show that an adversary who can po...
Property inference attacks against machine learning (ML) models aim to infer properties of the train...
Mode of access: World Wide WebTheoretical thesis.Bibliography pages 39-411 Introduction -- 2 Researc...
Machine learning (ML) models may be deemed confidential due to their sensitive training data, commer...
Machine learning (ML) has been widely adopted in various privacy-critical applications, e.g., face r...
134 pagesMachine learning as a technique of automatically constructing programs from past data for m...
We investigate an attack on a machine learning model that predicts whether a person or household wil...
Machine Learning today plays a vital role in a wide range of critical applications. To ensure ML mod...
Neural networks have become popular tools for many inference tasks nowadays. However, these networks...
As in-the-wild data are increasingly involved in the training stage, machine learning applications b...
Inference attacks against Machine Learning (ML) models allow adversaries to learn information about ...
Machine learning is being used in a wide range of application domains to discover patterns in large ...
It is known that deep neural networks, trained for the classification of non-sensitive target attrib...
Machine learning (ML) has become a core component of many real-world applications and training data ...
Luis Muñoz-González and Emil C. Lupu, from Imperial College London, explore the vulnerabilities of m...
We introduce a new class of attacks on machine learning models. We show that an adversary who can po...
Property inference attacks against machine learning (ML) models aim to infer properties of the train...
Mode of access: World Wide WebTheoretical thesis.Bibliography pages 39-411 Introduction -- 2 Researc...
Machine learning (ML) models may be deemed confidential due to their sensitive training data, commer...
Machine learning (ML) has been widely adopted in various privacy-critical applications, e.g., face r...
134 pagesMachine learning as a technique of automatically constructing programs from past data for m...
We investigate an attack on a machine learning model that predicts whether a person or household wil...
Machine Learning today plays a vital role in a wide range of critical applications. To ensure ML mod...
Neural networks have become popular tools for many inference tasks nowadays. However, these networks...
As in-the-wild data are increasingly involved in the training stage, machine learning applications b...
Inference attacks against Machine Learning (ML) models allow adversaries to learn information about ...
Machine learning is being used in a wide range of application domains to discover patterns in large ...
It is known that deep neural networks, trained for the classification of non-sensitive target attrib...