2022
DOI: 10.48550/arxiv.2203.09613
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Entangling Solid Solutions: Machine Learning of Tensor Networks for Materials Property Prediction

Abstract: Progress in the application of machine learning techniques to the prediction of solid-state and molecular materials properties has been greatly facilitated by the development state-of-the-art feature representations and novel deep learning architectures. A large class of atomic structure representations based on expansions of smoothed atomic densities have been shown to correspond to specific choices of basis sets in an abstract many-body Hilbert space. Concurrently, tensor network structures, conventionally t… Show more

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References 84 publications
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