Representation learning algorithms offer the opportunity to learn invariant representations of the input data with regard to nuisance factors. Many authors have leveraged such strategies to learn fair representations, i.e., vectors where information about sensitive attributes is removed. These methods are attractive as they may be interpreted as minimizing the mutual information between a neural layer's activations and a sensitive attribute. However, the theoretical grounding of such methods relies either on the computation of infinitely accurate adversaries or on minimizing a variational upper bound of a mutual information estimate. In this paper, we propose a methodology for direct computation of the mutual information between neurons in ...
We propose a novel approach to achieving invariance for deep neural networks in the form of inducing...
We discuss data representation which can be learned automatically from data, are invariant to transf...
A feedforward neural network is a computational device used for pattern recognition. In many recogni...
Representation learning algorithms offer the opportunity to learn invariant representations of the i...
How can neural networks learn to represent information optimally? We answer this question by derivin...
This work introduces two novel kernel-based measures to enforce certain invariance properties in the...
We study the problem of learning from data representations that are invariant to transformations, an...
We present a measure of representation in neural networks that we call ‘R’, which is based on inform...
A neural network model is proposed to achieve invariant pattern recognition to binary inputs based o...
We examine a class of stochastic deep learning models with a tractable method to compute information...
There have been a number of recent papers on information theory and neural networks, especially in a...
Abstract Coding for visual stimuli in the ventral stream is known to be invariant to ...
In this work we explore encoding strategies learned by statistical models of sensory coding in noisy...
In this work we explore encoding strategies learned by statistical models of sensory coding in noisy...
The paper studies a stochastic extension of continuous recurrent neural networks and analyzes gradie...
We propose a novel approach to achieving invariance for deep neural networks in the form of inducing...
We discuss data representation which can be learned automatically from data, are invariant to transf...
A feedforward neural network is a computational device used for pattern recognition. In many recogni...
Representation learning algorithms offer the opportunity to learn invariant representations of the i...
How can neural networks learn to represent information optimally? We answer this question by derivin...
This work introduces two novel kernel-based measures to enforce certain invariance properties in the...
We study the problem of learning from data representations that are invariant to transformations, an...
We present a measure of representation in neural networks that we call ‘R’, which is based on inform...
A neural network model is proposed to achieve invariant pattern recognition to binary inputs based o...
We examine a class of stochastic deep learning models with a tractable method to compute information...
There have been a number of recent papers on information theory and neural networks, especially in a...
Abstract Coding for visual stimuli in the ventral stream is known to be invariant to ...
In this work we explore encoding strategies learned by statistical models of sensory coding in noisy...
In this work we explore encoding strategies learned by statistical models of sensory coding in noisy...
The paper studies a stochastic extension of continuous recurrent neural networks and analyzes gradie...
We propose a novel approach to achieving invariance for deep neural networks in the form of inducing...
We discuss data representation which can be learned automatically from data, are invariant to transf...
A feedforward neural network is a computational device used for pattern recognition. In many recogni...