Regression models usually tend to recover a noisy signal in the form of a combination of regressors, also called features in machine learning, themselves being the result of a learning process. The alignment of the prior covariance feature matrix with the signal is known to play a key role in the generalization properties of the model, i.e. its ability to make predictions on unseen data during training. We present a statistical physics picture of the learning process. First we revisit the ridge regression to obtain compact asymptotic expressions for train and test errors, rendering manifest the conditions under which efficient generalization occurs. It is established thanks to an exact test-train sample error ratio combined with random matr...
The present paper elucidates a universal property of learning curves, which shows how the generaliza...
The randomized-feature approach has been successfully employed in large-scale kernel approximation a...
The effort to build machines that are able to learn and undertake tasks such as datamining, image pr...
Regression models usually tend to recover a noisy signal in the form of a combination of regressors,...
The brain integrates streams of sensory input and builds accurate predictions, while arriving at sta...
We introduce a modeling framework for the investigation of on-line machine learning processes in non...
We introduce and discuss the application of statistical physics concepts in the context of on-line m...
This manuscript considers the problem of learning a random Gaussian network function using a fully c...
We study generalised linear regression and classification for a synthetically generated dataset enco...
The restricted Boltzmann machine (RBM), an important tool used in machine learning in particular for...
We prove a universality theorem for learning with random features. Our result shows that, in terms o...
Autoencoders are the simplest neural network for unsupervised learning, and thus an ideal framework ...
The exchange of ideas between computer science and statistical physics has advanced the understandin...
The dynamics of supervised learning in layered neural networks were studied in the regime where the ...
Teacher-student models provide a framework in which the typical-case performance of high-dimensional...
The present paper elucidates a universal property of learning curves, which shows how the generaliza...
The randomized-feature approach has been successfully employed in large-scale kernel approximation a...
The effort to build machines that are able to learn and undertake tasks such as datamining, image pr...
Regression models usually tend to recover a noisy signal in the form of a combination of regressors,...
The brain integrates streams of sensory input and builds accurate predictions, while arriving at sta...
We introduce a modeling framework for the investigation of on-line machine learning processes in non...
We introduce and discuss the application of statistical physics concepts in the context of on-line m...
This manuscript considers the problem of learning a random Gaussian network function using a fully c...
We study generalised linear regression and classification for a synthetically generated dataset enco...
The restricted Boltzmann machine (RBM), an important tool used in machine learning in particular for...
We prove a universality theorem for learning with random features. Our result shows that, in terms o...
Autoencoders are the simplest neural network for unsupervised learning, and thus an ideal framework ...
The exchange of ideas between computer science and statistical physics has advanced the understandin...
The dynamics of supervised learning in layered neural networks were studied in the regime where the ...
Teacher-student models provide a framework in which the typical-case performance of high-dimensional...
The present paper elucidates a universal property of learning curves, which shows how the generaliza...
The randomized-feature approach has been successfully employed in large-scale kernel approximation a...
The effort to build machines that are able to learn and undertake tasks such as datamining, image pr...