Abstract Transfer learning refers to the use of knowledge gained while solving a machine learning task and applying it to the solution of a closely related problem. Such an approach has enabled scientific breakthroughs in computer vision and natural language processing where the weights learned in state-of-the-art models can be used to initialize models for other tasks which dramatically improve their performance and save computational time. Here we demonstrate an unsupervised learning approach augmented with basic physical principles that achieves fully transferrable learning for problems in statistical physics across different physical regimes. By coupling a sequence model based on a recurrent neural network to an extensive...
Learning algorithms for perceptrons are deduced from statistical mechanics. Thermodynamical quantiti...
The exchange of ideas between computer science and statistical physics has advanced the understandin...
Despite the immense success of neural networks in modeling system dynamics from data, they often rem...
Abstract Transfer learning refers to the use of knowledge gained while solving a mach...
A summary is presented of the statistical mechanical theory of learning a rule with a neural network...
The recent progresses in Machine Learning opened the door to actual applications of learning algorit...
The exchange of ideas between statistical physics and computer science has been very fruitful and is...
International audienceThe recent progresses in Machine Learning opened the door to actual applicatio...
The statistical physics of disordered systems provides tools for the investigation of learning proce...
The statistical physics of disordered systems provides tools for the investigation of learning proce...
The effort to build machines that are able to learn and undertake tasks such as datamining, image pr...
The physical world around us is profoundly complex and for centuries we have sought to develop a dee...
We propose to interpret machine learning functions as physical observables, opening up the possibili...
We introduce and discuss the application of statistical physics concepts in the context of on-line m...
Learning algorithms for perceptrons are deduced from statistical mechanics. Thermodynamical quantiti...
The exchange of ideas between computer science and statistical physics has advanced the understandin...
Despite the immense success of neural networks in modeling system dynamics from data, they often rem...
Abstract Transfer learning refers to the use of knowledge gained while solving a mach...
A summary is presented of the statistical mechanical theory of learning a rule with a neural network...
The recent progresses in Machine Learning opened the door to actual applications of learning algorit...
The exchange of ideas between statistical physics and computer science has been very fruitful and is...
International audienceThe recent progresses in Machine Learning opened the door to actual applicatio...
The statistical physics of disordered systems provides tools for the investigation of learning proce...
The statistical physics of disordered systems provides tools for the investigation of learning proce...
The effort to build machines that are able to learn and undertake tasks such as datamining, image pr...
The physical world around us is profoundly complex and for centuries we have sought to develop a dee...
We propose to interpret machine learning functions as physical observables, opening up the possibili...
We introduce and discuss the application of statistical physics concepts in the context of on-line m...
Learning algorithms for perceptrons are deduced from statistical mechanics. Thermodynamical quantiti...
The exchange of ideas between computer science and statistical physics has advanced the understandin...
Despite the immense success of neural networks in modeling system dynamics from data, they often rem...