2024 Nobel Prize in Physics

Nobel Prize 2018

On October 8, the Nobel Prize in Physics 2024 was awarded to John J. Hopfield and Geoffrey E. Hinton "for foundational discoveries and inventions that enable machine learning with artificial neural networks".*

This year’s Nobel Laureates didn’t achieve their breakthroughs overnight. Below you can read, share, and download a selection of their research that’s published across Springer Nature’s journals and books. Read the story of this year’s Laureates in Physics.

*The Nobel Prize in Physics 2024 - NobelPrize.org.

Publications by John J. Hopfield

Book chapters

Collective Computation, Content-Adressable Memory, and Optimization Problems. In: Complexity in Information TheoryBiological Information Processing and Molecular Nanocomputing. In: From Neural Networks and Biomolecular Engineering to Bioelectronics

Brain, Neural Networks, and Computation. In: 

More Things in Heaven and Earth

Collective Computation With Continuous Variables. In: 
Disordered Systems and Biological Organization
Matching Neural Models to Experiment. In: Computation and Neural Systems 

The Logic of Limax Learning. In: Model Neural Networks and Behavior


Publications by Geoffrey E. Hinton

Articles

Split and Merge EM Algorithm for Improving Gaussian Mixture Density Estimates. Published in: Journal of Signal Processing Systems Coaching variables for regression and classification. In: Statistics and Computing Visualizing non-metric similarities in multiple maps. In: Machine Learning 

Computation by neural networks. Published in: Nature

Guest Editorial: Deep Learning. Published in: International Journal of Computer Vision

Learning representations by back-propagating errors. Published in: Nature

Backpropagation and the brain. Published in: Nature Reviews Neuroscience

 Self-organizing neural network that discovers surfaces in random-dot stereograms. Published in: Nature 

Deep learning. Published in: Nature

Book chapters

NASA Neural Articulated Shape Approximation. In: Computer Vision – ECCV 2020

A Practical Guide to Training Restricted Boltzmann Machines. In: Neural Networks: Tricks of the Trade

Transforming Auto-Encoders. In: Artificial Neural Networks and Machine Learning – ICANN 2011

Learning to Detect Roads in High-Resolution Aerial Images. In: Computer Vision – ECCV 2010

Analysis-by-Synthesis by Learning to Invert Generative Black Boxes. In: Artificial Neural Networks - ICANN 2008

A New Learning Algorithm for Mean Field Boltzmann Machines. In: Artificial Neural Networks — ICANN 2002

Keeping Neural Networks Simple. In: ICANN ’93

Learning translation invariant recognition in a massively parallel networks. In: PARLE Parallel Architectures and Languages Europe

Boltzmann Machines. In: Encyclopedia of Machine Learning and Data Mining
Deep Belief Nets. In: Encyclopedia of Machine Learning and Data Mining   


L_brandstrip_bmc
L_brandstrip_natureresearch
L_brandstrip_springer