Orders of coupling representations as a versatile framework for machine learning from sparse data in high-dimensional spaces

Sergei Manzhos , Tucker Carrington , Manabu Ihara
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引用次数: 1

Abstract

Machine learning (ML) techniques are already widely and increasingly used in diverse applications in science and technology, including computational chemistry. Specifically in computational chemistry, neural networks (NN) and kernel methods such as Gaussian process regressions (GPR) have been increasingly used for the construction of potential functions and functionals for density functional theory. While ML techniques have a number of advantages vs intuition-based models, notably their generality and black-box nature, they are still challenged when faced with high dimensionality of the feature space or low and uneven data density – in part because of their general nature. We review recent works using methods such as NNs and GPR as building blocks of composite methods in the framework of an expansion over orders of coupling. We introduce models using NN or GPR-based components as part of HDMR (high-dimensional model representations)-based structures. HDMR is a formalization of orders-of-coupling representations that include the many-body and N-mode representations well known in computational chemistry and allows, in particular, building all terms from one dataset of arbitrarily distributed data. The resulting HDMR-NN and HDMR-GPR combinations and NN with HDMR-GPR derived neuron activation functions not requiring non-linear optimization enhance machine learning capabilities in high dimensional spaces and or with sparse data.

耦合表示的阶数作为高维空间中稀疏数据机器学习的通用框架
机器学习(ML)技术已经被广泛且越来越多地用于科学技术的各种应用,包括计算化学。特别是在计算化学中,神经网络(NN)和高斯过程回归(GPR)等核方法越来越多地用于构建密度泛函理论的势函数和泛函。虽然ML技术与基于直觉的模型相比有很多优势,特别是它们的通用性和黑匣子性质,但当面临高维度的特征空间或低且不均匀的数据密度时,它们仍然面临挑战——部分原因是它们的一般性。我们回顾了最近的工作,使用神经网络和GPR等方法作为复合方法的构建块,在耦合阶数扩展的框架中。我们介绍了使用基于NN或GPR的组件作为基于HDMR(高维模型表示)的结构的一部分的模型。HDMR是耦合表示顺序的形式化,包括计算化学中众所周知的多体和N模表示,并且特别允许从任意分布数据的一个数据集构建所有项。所得到的HDMR-NN和HDMR-GPR组合以及不需要非线性优化的具有HDMR-GPR-衍生的神经元激活函数的NN增强了高维空间和/或稀疏数据中的机器学习能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Artificial intelligence chemistry
Artificial intelligence chemistry Chemistry (General)
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