Despite their great success in many artificial intelligence tasks, deep neural networks (DNNs) still suffer from a few limitations, such as poor generalization behavior for out-of-distribution (OOD) data and the "black-box" nature. Information theory offers fresh insights to solve these challenges. In this short paper, we briefly review the recent developments in this area, and highlight our contributions
Deep learning has proven to be an important element of modern data processing technology, which has ...
Deep learning has proven to be an important element of modern data processing technology, which has ...
Deep learning has proven to be an important element of modern data processing technology, which has ...
There is a need to better understand how generalization works in a deep learning model. The goal of ...
With the unprecedented performance achieved by deep learning, it is commonly believed that deep neur...
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...
Deep learning has transformed computer vision, natural language processing, and speech recognition. ...
This work aims to provide profound insights into neural networks and deep learning, focusing on thei...
This paper argues that a notion of statistical explanation, based on Salmon's statistical relevance ...
International audienceThe renewal of research interest in machine learning came with the emergence o...
International audienceThe renewal of research interest in machine learning came with the emergence o...
Full arxiv preprint version available here: https://arxiv.org/abs/2001.06178A robust theoretical fra...
The goal of this thesis was to investigate how information theory could be used to analyze artificia...
One of the important challenges today in deep learning is explaining the outstanding power of genera...
Deep learning has proven to be an important element of modern data processing technology, which has ...
Deep learning has proven to be an important element of modern data processing technology, which has ...
Deep learning has proven to be an important element of modern data processing technology, which has ...
There is a need to better understand how generalization works in a deep learning model. The goal of ...
With the unprecedented performance achieved by deep learning, it is commonly believed that deep neur...
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...
Deep learning has transformed computer vision, natural language processing, and speech recognition. ...
This work aims to provide profound insights into neural networks and deep learning, focusing on thei...
This paper argues that a notion of statistical explanation, based on Salmon's statistical relevance ...
International audienceThe renewal of research interest in machine learning came with the emergence o...
International audienceThe renewal of research interest in machine learning came with the emergence o...
Full arxiv preprint version available here: https://arxiv.org/abs/2001.06178A robust theoretical fra...
The goal of this thesis was to investigate how information theory could be used to analyze artificia...
One of the important challenges today in deep learning is explaining the outstanding power of genera...
Deep learning has proven to be an important element of modern data processing technology, which has ...
Deep learning has proven to be an important element of modern data processing technology, which has ...
Deep learning has proven to be an important element of modern data processing technology, which has ...