International audienceSeveral machine learning problems such as latent variable model learning and community detection can be addressed by estimating a low-rank signal from a noisy tensor. Despite recent substantial progress on the fundamental limits of the corresponding estimators in the large-dimensional setting, some of the most significant results are based on spin glass theory, which is not easily accessible to non-experts. We propose a sharply distinct and more elementary approach, relying on tools from random matrix theory. The key idea is to study random matrices arising from contractions of a random tensor, which give access to its spectral properties. In particular, for a symmetric dth-order rank-one model with Gaussian noise, our...
International audienceThis article studies the Gram random matrix model G = 1 T Σ T Σ, Σ = σ(W X), c...
International audienceThis article studies the Gram random matrix model G = 1 T Σ T Σ, Σ = σ(W X), c...
Unsupervised learning aims at the discovery of hidden structure that drives the observations in the ...
International audienceSeveral machine learning problems such as latent variable model learning and c...
International audienceSeveral machine learning problems such as latent variable model learning and c...
International audienceSeveral machine learning problems such as latent variable model learning and c...
International audienceSeveral machine learning problems such as latent variable model learning and c...
Tensor models play an increasingly prominent role in many fields, notably in machine learning. In se...
This book presents a unified theory of random matrices for applications in machine learning, offerin...
This thesis concerns the optimization and application of low-rank methods, with a special focus on t...
This thesis concerns the optimization and application of low-rank methods, with a special focus on t...
International audienceThis article studies the Gram random matrix model G = 1 T Σ T Σ, Σ = σ(W X), c...
International audienceThis article studies the Gram random matrix model G = 1 T Σ T Σ, Σ = σ(W X), c...
International audienceThis article studies the Gram random matrix model G = 1 T Σ T Σ, Σ = σ(W X), c...
International audienceThis article studies the Gram random matrix model G = 1 T Σ T Σ, Σ = σ(W X), c...
International audienceThis article studies the Gram random matrix model G = 1 T Σ T Σ, Σ = σ(W X), c...
International audienceThis article studies the Gram random matrix model G = 1 T Σ T Σ, Σ = σ(W X), c...
Unsupervised learning aims at the discovery of hidden structure that drives the observations in the ...
International audienceSeveral machine learning problems such as latent variable model learning and c...
International audienceSeveral machine learning problems such as latent variable model learning and c...
International audienceSeveral machine learning problems such as latent variable model learning and c...
International audienceSeveral machine learning problems such as latent variable model learning and c...
Tensor models play an increasingly prominent role in many fields, notably in machine learning. In se...
This book presents a unified theory of random matrices for applications in machine learning, offerin...
This thesis concerns the optimization and application of low-rank methods, with a special focus on t...
This thesis concerns the optimization and application of low-rank methods, with a special focus on t...
International audienceThis article studies the Gram random matrix model G = 1 T Σ T Σ, Σ = σ(W X), c...
International audienceThis article studies the Gram random matrix model G = 1 T Σ T Σ, Σ = σ(W X), c...
International audienceThis article studies the Gram random matrix model G = 1 T Σ T Σ, Σ = σ(W X), c...
International audienceThis article studies the Gram random matrix model G = 1 T Σ T Σ, Σ = σ(W X), c...
International audienceThis article studies the Gram random matrix model G = 1 T Σ T Σ, Σ = σ(W X), c...
International audienceThis article studies the Gram random matrix model G = 1 T Σ T Σ, Σ = σ(W X), c...
Unsupervised learning aims at the discovery of hidden structure that drives the observations in the ...