» Articles » PMID: 16480307

Random Sampling-high Dimensional Model Representation (RS-HDMR) and Orthogonality of Its Different Order Component Functions

Overview
Journal J Phys Chem A
Specialty Chemistry
Date 2006 Feb 17
PMID 16480307
Citations 8
Authors
Affiliations
Soon will be listed here.
Abstract

High dimensional model representation is under active development as a set of quantitative model assessment and analysis tools for capturing high-dimensional input-output system behavior based on a hierarchy of functions of increasing dimensions. The HDMR component functions are optimally constructed from zeroth order to higher orders step-by-step. This paper extends the definitions of HDMR component functions to systems whose input variables may not be independent. The orthogonality of the higher order terms with respect to the lower order ones guarantees the best improvement in accuracy for the higher order approximations. Therefore, the HDMR component functions are constructed to be mutually orthogonal. The RS-HDMR component functions are efficiently constructed from randomly sampled input-output data. The previous introduction of polynomial approximations for the component functions violates the strictly desirable orthogonality properties. In this paper, new orthonormal polynomial approximation formulas for the RS-HDMR component functions are presented that preserve the orthogonality property. An integrated exposure and dose model as well as ionospheric electron density determined from measured ionosonde data are used as test cases, which show that the new method has better accuracy than the prior one.

Citing Articles

High dimensional model representation of log likelihood ratio: binary classification with SNP data.

Foroughi Pour A, Pietrzak M, Sucheston-Campbell L, Karaesmen E, Dalton L, Rempala G BMC Med Genomics. 2020; 13(Suppl 9):133.

PMID: 32957998 PMC: 7504683. DOI: 10.1186/s12920-020-00774-1.


An Investigation into the Dynamic Recrystallization (DRX) Behavior and Processing Map of 33Cr23Ni8Mn3N Based on an Artificial Neural Network (ANN).

Cai Z, Ji H, Pei W, Tang X, Xin L, Lu Y Materials (Basel). 2020; 13(6).

PMID: 32178352 PMC: 7142500. DOI: 10.3390/ma13061282.


Estimation of Sobol's Sensitivity Indices under Generalized Linear Models.

Lu R, Wang D, Wang M, Rempala G Commun Stat Theory Methods. 2018; 47(21):5163-5195.

PMID: 30237653 PMC: 6141050. DOI: 10.1080/03610926.2017.1388397.


RACIPE: a computational tool for modeling gene regulatory circuits using randomization.

Huang B, Jia D, Feng J, Levine H, Onuchic J, Lu M BMC Syst Biol. 2018; 12(1):74.

PMID: 29914482 PMC: 6006707. DOI: 10.1186/s12918-018-0594-6.


Towards controlling the glycoform: a model framework linking extracellular metabolites to antibody glycosylation.

Jedrzejewski P, Jimenez Del Val I, Constantinou A, Dell A, Haslam S, Polizzi K Int J Mol Sci. 2014; 15(3):4492-522.

PMID: 24637934 PMC: 3975410. DOI: 10.3390/ijms15034492.