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Hybrid HDMR method with an optimized hybridity parameter in multivariate function representation

机译:多元函数表示中具有优化混合参数的混合HD​​MR方法

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摘要

High Dimensional Model Representation (HDMR) based methods are used to generate an approximation for a given multivariate function in terms of less variate functions. This paper focuses on Hybrid HDMR which is composed of Plain HDMR and Logarithmic HDMR. The Plain HDMR method works well for representing multivariate functions having additive nature. If the function under consideration has a multiplicative nature, then the Logarithmic HDMR method produces better approximation. Hybrid HDMR method aims to successfully represent a multivariate function having neither purely additive nor purely multiplicative nature under a hybridity parameter. The performance of the Hybrid HDMR method strongly depends on the value of this hybridity parameter because this parameter manages the contribution level of Plain and Logarithmic HDMR expansions. The main purpose of this work is to optimize the hybridity parameter to get the best approximations. Fluctuationlessness Approximation Theorem is used in this optimization process and in evaluating the multiple integrals appearing in HDMR based methods. A number of numerical implementations are given at the end of the paper to show the performance of our proposed method.
机译:基于高维模型表示(HDMR)的方法用于根据较小的变量函数为给定的多元函数生成近似值。本文重点介绍混合HDMR,它由普通HDMR和对数HDMR组成。 Plain HDMR方法非常适合表示具有加性的多元函数。如果所考虑的函数具有乘法性质,那么对数HDMR方法会产生更好的近似值。混合HDMR方法旨在成功地表示在混合参数下既不具有纯加性也不具有纯乘性的多元函数。混合HDMR方法的性能在很大程度上取决于此混合参数的值,因为此参数管理普通和对数HDMR展开的贡献水平。这项工作的主要目的是优化混合参数以获得最佳近似值。无波动近似定理用于此优化过程中,并用于评估基于HDMR的方法中出现的多个积分。本文末尾给出了许多数值实现,以显示我们提出的方法的性能。

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