From Boltzmann machines to Born machines
· Invited
Abstract
Statistical physics has made profound impacts on machine learning, e.g., energy-based models for generative modeling and mean-field approaches for variational inference. We argue that quantum physics can be equally inspirational by exploiting mind-provoking analogies between the "image space" and the Hilbert space. Exchanging of ideas, insights, techniques, and even intuitions developed for machine learning and quantum physics will cross-fertilize both research fields. In particular, I shall talk about quantum inspired generative models with explicit and implicit probability densities.
*Research is supported by the Ministry of Science and Technology of China under the Grant No. 2016YFA0300603 and National Natural Science Foundation of China under the Grant No. 11774398.
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Presenters
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Lei Wang
- Institute of Physics, Chinese Academy of Science
- Chinese Academy of Sciences
- Institute of Physics, Chinese Academy of Sciences