Neural networks have been used successfully in a variety of fields, which has led to a great deal of interest in developing a theoretical understanding of how they store the information needed to perform a particular task. We study the weight matrices of trained deep neural networks using methods from random matrix theory (RMT) and show that the statistics of most of the singular values follow universal RMT predictions. This suggests that they are random and do not contain system specific information, which we investigate further by comparing the statistics of eigenvector entries to the universal Porter-Thomas distribution. We find that for most eigenvectors the hypothesis of randomness cannot be rejected, and that only eigenvectors belongi...
Abstract. A class of neuralmodels isintroduced inwhichthe topology of the neural network has been ge...
(A) Empirical eigenvalue density versus calculated eigenvalue density for the two random models. (B)...
International audienceSeveral machine learning problems such as latent variable model learning and c...
We study the distribution of singular values of product of random matrices pertinent to the analysis...
This paper considers several aspects of random matrix universality in deep neural networks. Motivate...
This paper considers several aspects of random matrix universality in deep neural networks. Motivate...
The paper deals with the distribution of singular values of the input-output Jacobian of deep untrai...
We investigate the local spectral statistics of the loss surface Hessians of artificial neural netwo...
International audienceThis article studies the Gram random matrix model G = 1 T Σ T Σ, Σ = σ(W X), c...
International audienceThis article proposes an original approach to the performance understanding of...
Random feature mapping (RFM) is the core operation in the random weight neural network (RWNN). Its q...
This paper focuses on large neural networks whose synaptic connectivity matrices are randomly chosen...
This book presents a unified theory of random matrices for applications in machine learning, offerin...
International audienceThis article provides a theoretical analysis of the asymptotic performance of ...
In connection with some problems that arise in the study of neural networks random matrices are cons...
Abstract. A class of neuralmodels isintroduced inwhichthe topology of the neural network has been ge...
(A) Empirical eigenvalue density versus calculated eigenvalue density for the two random models. (B)...
International audienceSeveral machine learning problems such as latent variable model learning and c...
We study the distribution of singular values of product of random matrices pertinent to the analysis...
This paper considers several aspects of random matrix universality in deep neural networks. Motivate...
This paper considers several aspects of random matrix universality in deep neural networks. Motivate...
The paper deals with the distribution of singular values of the input-output Jacobian of deep untrai...
We investigate the local spectral statistics of the loss surface Hessians of artificial neural netwo...
International audienceThis article studies the Gram random matrix model G = 1 T Σ T Σ, Σ = σ(W X), c...
International audienceThis article proposes an original approach to the performance understanding of...
Random feature mapping (RFM) is the core operation in the random weight neural network (RWNN). Its q...
This paper focuses on large neural networks whose synaptic connectivity matrices are randomly chosen...
This book presents a unified theory of random matrices for applications in machine learning, offerin...
International audienceThis article provides a theoretical analysis of the asymptotic performance of ...
In connection with some problems that arise in the study of neural networks random matrices are cons...
Abstract. A class of neuralmodels isintroduced inwhichthe topology of the neural network has been ge...
(A) Empirical eigenvalue density versus calculated eigenvalue density for the two random models. (B)...
International audienceSeveral machine learning problems such as latent variable model learning and c...