The exchange of ideas between statistical physics and computer science has been very fruitful and is currently gaining momentum as a consequence of the revived interest in neural networks, machine learning and inference in general. Statistical physics methods complement other approaches to the theoretical understanding of machine learning processes and inference in stochastic modeling. They facilitate, for instance, the study of dynamical and equilibrium properties of randomized training processes in model situations. At the same time, the approach inspires novel and efficient algorithms and facilitates interdisciplinary applications in a variety of scientific and technical disciplines
Abstract Transfer learning refers to the use of knowledge gained while solving a mach...
Statistical learning theory provides the theoretical basis for many of today's machine learning algo...
International audienceMachine learning (ML) encompasses a broad range of algorithms and modeling too...
The exchange of ideas between statistical physics and computer science has been very fruitful and is...
The exchange of ideas between computer science and statistical physics has advanced the understandin...
International audienceThe recent progresses in Machine Learning opened the door to actual applicatio...
The recent progresses in Machine Learning opened the door to actual applications of learning algorit...
The effort to build machines that are able to learn and undertake tasks such as datamining, image pr...
We introduce and discuss the application of statistical physics concepts in the context of on-line m...
A summary is presented of the statistical mechanical theory of learning a rule with a neural network...
The exchange of ideas between computer science and statistical physics has advanced the understandin...
Cette contribution présente le formalisme et quelques résultats importants spécifiques de l'étude de...
AbstractSome basic issues in the statistical mechanics of learning from examples are reviewed. The a...
Abstract Transfer learning refers to the use of knowledge gained while solving a mach...
Statistical learning theory provides the theoretical basis for many of today's machine learning algo...
International audienceMachine learning (ML) encompasses a broad range of algorithms and modeling too...
The exchange of ideas between statistical physics and computer science has been very fruitful and is...
The exchange of ideas between computer science and statistical physics has advanced the understandin...
International audienceThe recent progresses in Machine Learning opened the door to actual applicatio...
The recent progresses in Machine Learning opened the door to actual applications of learning algorit...
The effort to build machines that are able to learn and undertake tasks such as datamining, image pr...
We introduce and discuss the application of statistical physics concepts in the context of on-line m...
A summary is presented of the statistical mechanical theory of learning a rule with a neural network...
The exchange of ideas between computer science and statistical physics has advanced the understandin...
Cette contribution présente le formalisme et quelques résultats importants spécifiques de l'étude de...
AbstractSome basic issues in the statistical mechanics of learning from examples are reviewed. The a...
Abstract Transfer learning refers to the use of knowledge gained while solving a mach...
Statistical learning theory provides the theoretical basis for many of today's machine learning algo...
International audienceMachine learning (ML) encompasses a broad range of algorithms and modeling too...