We address the practical problems of estimating the information relations that characterize large networks. Building on methods developed for analysis of the neural code, we show that reliable estimates of mutual information can be obtained with manageable computational effort. The same methods allow estimation of higher order, multi--information terms. These ideas are illustrated by analyses of gene expression, financial markets, and consumer preferences. In each case, information theoretic measures correlate with independent, intuitive measures of the underlying structures in the system
Using Shannon information theory to analyse the contributions from two source variables to a target,...
Information theory is a practical and theoretic framework developed for the study of communication o...
Complexity and information theory are two very valuable but distinct fields of research, yet sharing...
The present paper1 aims to propose a new type of information-theoretic method to maximize mutual inf...
Complex systems are increasingly studied as dynamical systems unfolding on complex networks, althoug...
There is a need to better understand how generalization works in a deep learning model. The goal of ...
Journal PaperMutual information enjoys wide use in the computational neuroscience community for anal...
The connectivity of a network contains information about the relationships between nodes, which can ...
Information theory is a powerful tool for analyzing complex systems. In many areas of neuroscience, ...
Information theory provides a powerful framework to analyse the representation of sensory stimuli in...
This chapter discusses the role of information theory for analysis of neural networks using differen...
BACKGROUND: Characterising programs of gene regulation by studying individual protein-DNA and protei...
One of the goals of complex network analysis is to identify the most influential nodes, i.e., the no...
Information theory is a practical and theoretical framework developed for the study of communication...
The goal of this thesis was to investigate how information theory could be used to analyze artificia...
Using Shannon information theory to analyse the contributions from two source variables to a target,...
Information theory is a practical and theoretic framework developed for the study of communication o...
Complexity and information theory are two very valuable but distinct fields of research, yet sharing...
The present paper1 aims to propose a new type of information-theoretic method to maximize mutual inf...
Complex systems are increasingly studied as dynamical systems unfolding on complex networks, althoug...
There is a need to better understand how generalization works in a deep learning model. The goal of ...
Journal PaperMutual information enjoys wide use in the computational neuroscience community for anal...
The connectivity of a network contains information about the relationships between nodes, which can ...
Information theory is a powerful tool for analyzing complex systems. In many areas of neuroscience, ...
Information theory provides a powerful framework to analyse the representation of sensory stimuli in...
This chapter discusses the role of information theory for analysis of neural networks using differen...
BACKGROUND: Characterising programs of gene regulation by studying individual protein-DNA and protei...
One of the goals of complex network analysis is to identify the most influential nodes, i.e., the no...
Information theory is a practical and theoretical framework developed for the study of communication...
The goal of this thesis was to investigate how information theory could be used to analyze artificia...
Using Shannon information theory to analyse the contributions from two source variables to a target,...
Information theory is a practical and theoretic framework developed for the study of communication o...
Complexity and information theory are two very valuable but distinct fields of research, yet sharing...