AbstractThe Information Bottleneck is an information theoretic framework that finds concise representations for an ‘input’ random variable that are as relevant as possible for an ‘output’ random variable. This framework has been used successfully in various supervised and unsupervised applications. However, its learning theoretic properties and justification remained unclear as it differs from standard learning models in several crucial aspects, primarily its explicit reliance on the joint input–output distribution. In practice, an empirical plug-in estimate of the underlying distribution has been used, so far without any finite sample performance guarantees. In this paper we present several formal results that address these difficulties. W...
The focus of this thesis is on understanding machine learning algorithms from an information-theoret...
International audienceA grand challenge in representation learning is the development of computation...
The focus of this thesis is on understanding machine learning algorithms from an information-theoret...
A grand challenge in representation learning is the development of computational algorithms that lea...
International audienceA grand challenge in representation learning is the development of computation...
International audienceA grand challenge in representation learning is the development of computation...
International audienceA grand challenge in representation learning is the development of computation...
International audienceA grand challenge in representation learning is the development of computation...
In this thesis we study the information bottleneck (IB) method. This is an informationtheoretic fram...
In this thesis we study the information bottleneck (IB) method. This is an informationtheoretic fram...
In this thesis we study the information bottleneck (IB) method. This is an informationtheoretic fram...
The Information Bottleneck (IB) method provides an insightful and principled approach for balancing ...
Abstract. A fundamental question in learning theory is the quantification of the basic tradeoff betw...
The information bottleneck function gives a measure of optimal preservation of correlation between s...
The celebrated information bottleneck (IB) principle of Tishby et al. has recently enjoyed renewed a...
The focus of this thesis is on understanding machine learning algorithms from an information-theoret...
International audienceA grand challenge in representation learning is the development of computation...
The focus of this thesis is on understanding machine learning algorithms from an information-theoret...
A grand challenge in representation learning is the development of computational algorithms that lea...
International audienceA grand challenge in representation learning is the development of computation...
International audienceA grand challenge in representation learning is the development of computation...
International audienceA grand challenge in representation learning is the development of computation...
International audienceA grand challenge in representation learning is the development of computation...
In this thesis we study the information bottleneck (IB) method. This is an informationtheoretic fram...
In this thesis we study the information bottleneck (IB) method. This is an informationtheoretic fram...
In this thesis we study the information bottleneck (IB) method. This is an informationtheoretic fram...
The Information Bottleneck (IB) method provides an insightful and principled approach for balancing ...
Abstract. A fundamental question in learning theory is the quantification of the basic tradeoff betw...
The information bottleneck function gives a measure of optimal preservation of correlation between s...
The celebrated information bottleneck (IB) principle of Tishby et al. has recently enjoyed renewed a...
The focus of this thesis is on understanding machine learning algorithms from an information-theoret...
International audienceA grand challenge in representation learning is the development of computation...
The focus of this thesis is on understanding machine learning algorithms from an information-theoret...