Search Results for author: Giuseppe Ughi

Found 4 papers, 1 papers with code

Mutual Information of Neural Network Initialisations: Mean Field Approximations

no code implementations8 Feb 2021 Jared Tanner, Giuseppe Ughi

The ability to train randomly initialised deep neural networks is known to depend strongly on the variance of the weight matrices and biases as well as the choice of nonlinear activation.

Information Theory Information Theory

An Empirical Study of Derivative-Free-Optimization Algorithms for Targeted Black-Box Attacks in Deep Neural Networks

no code implementations3 Dec 2020 Giuseppe Ughi, Vinayak Abrol, Jared Tanner

We perform a comprehensive study on the performance of derivative free optimization (DFO) algorithms for the generation of targeted black-box adversarial attacks on Deep Neural Network (DNN) classifiers assuming the perturbation energy is bounded by an $\ell_\infty$ constraint and the number of queries to the network is limited.

A Model-Based Derivative-Free Approach to Black-Box Adversarial Examples: BOBYQA

1 code implementation24 Feb 2020 Giuseppe Ughi, Vinayak Abrol, Jared Tanner

We demonstrate that model-based derivative free optimisation algorithms can generate adversarial targeted misclassification of deep networks using fewer network queries than non-model-based methods.

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