There is a need to better understand how generalization works in a deep learning model. The goal of this paper is to provide a clearer view of the black box called neural network. This is done by using information theory to compute the flow of information within a network. The proposed framework uses an indicator that computes the mutual information of all hidden layers within the deep learning model. The indicator represents the predictive capabilities of the neural network. The evolution of the indicator provides another level of analysis with regards to the generalization capabilities. By using information theory, we can express the flow of information within a previously unseen black box. The framework provides the capability to analyse...
This chapter discusses the role of information theory for analysis of neural networks using differen...
MEng (Computer en Electronic Engineering), North-West University, Potchefstroom CampusThe generalisa...
Deep learning has proven to be an important element of modern data processing technology, which has ...
Despite their great success in many artificial intelligence tasks, deep neural networks (DNNs) still...
The present paper1 aims to propose a new type of information-theoretic method to maximize mutual inf...
Deep Learning (DL) networks are recent revolutionary developments in artificial intelligence researc...
Deep Learning (DL) networks are recent revolutionary developments in artificial intelligence researc...
The goal of this thesis was to investigate how information theory could be used to analyze artificia...
Deep Learning (DL) networks are recent revolutionary developments in artificial intelligence researc...
The goal of this thesis was to investigate how information theory could be used to analyze artificia...
Deep Learning (DL) networks are recent revolutionary developments in artificial intelligence researc...
Deep Learning (DL) networks are recent revolutionary developments in artificial intelligence researc...
With the unprecedented performance achieved by deep learning, it is commonly believed that deep neur...
Deep learning has transformed computer vision, natural language processing, and speech recognition. ...
With the unprecedented performance achieved by deep learning, it is commonly believed that deep neur...
This chapter discusses the role of information theory for analysis of neural networks using differen...
MEng (Computer en Electronic Engineering), North-West University, Potchefstroom CampusThe generalisa...
Deep learning has proven to be an important element of modern data processing technology, which has ...
Despite their great success in many artificial intelligence tasks, deep neural networks (DNNs) still...
The present paper1 aims to propose a new type of information-theoretic method to maximize mutual inf...
Deep Learning (DL) networks are recent revolutionary developments in artificial intelligence researc...
Deep Learning (DL) networks are recent revolutionary developments in artificial intelligence researc...
The goal of this thesis was to investigate how information theory could be used to analyze artificia...
Deep Learning (DL) networks are recent revolutionary developments in artificial intelligence researc...
The goal of this thesis was to investigate how information theory could be used to analyze artificia...
Deep Learning (DL) networks are recent revolutionary developments in artificial intelligence researc...
Deep Learning (DL) networks are recent revolutionary developments in artificial intelligence researc...
With the unprecedented performance achieved by deep learning, it is commonly believed that deep neur...
Deep learning has transformed computer vision, natural language processing, and speech recognition. ...
With the unprecedented performance achieved by deep learning, it is commonly believed that deep neur...
This chapter discusses the role of information theory for analysis of neural networks using differen...
MEng (Computer en Electronic Engineering), North-West University, Potchefstroom CampusThe generalisa...
Deep learning has proven to be an important element of modern data processing technology, which has ...