2021
DOI: 10.20944/preprints202110.0113.v1
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Factorization in Molecular Modeling and Belief Propagation Algorithms

Abstract: Factorization reduces computational complexity and is therefore an important tool in statistical machine learning of high dimensional systems. Conventional molecular modeling, including molecular dynamics and Monte Carlo simulations of molecular systems, is a large research field based on approximate factorization of molecular interactions. Recently, the local distribution theory was proposed to factorize global joint distribution of a given molecular system into trainable local distributions. Belief propagati… Show more

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