Approximating quantum many-body wave-functions using artificial neural networks

来源 :第7届量子多体计算会议(The 7th Workshop on Quantum Multi - Body Computi | 被引量 : 0次 | 上传用户:cramzhou
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Outline A brief introduction of machine learning methods Fundamental difficulties in strongly correlated systems:current solutions and limitations Artificial neural network:a new solution?Conclusion and outlook
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COLLABORATORS Acknowledgement to ERC AdG OSYRIS(ERC-2013-AdG Grant No.339106),the Spanish MINECO grants FOQUS(FIS2013-46768-P),FISICATEAMO(FIS2016-79508-P),and
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