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Bound Analysis Through HDMR for Multivariate Data Modelling - CMMSE

机译:通过HDMR进行边界分析以进行多元数据建模-CMMSE

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Multivariate data modelling problems consist of a number of nodes with associated function (class) values. The main purpose of these problems is to construct an analytical model to represent the characteristics of the problem under consideration. Because the devices, tools, and/or algorithms used to collect the data may have incapabilities or limited capabilities, the data set is likely to contain unavoidable errors. That is, each component of data is reliable only within an interval which contains the data value. To this end, when an analytical structure is needed for the given data, a band structure should be determined instead of a unique structure. As the multivariance of the given data set increases, divide–and–conquer methods become important in multivariate modelling problems. HDMR based methods allow us to partition the given multivariate data into less variate data sets to reduce the complexity of the given problem. This paper focuses on Interval Factorized HDMR method developed to determine an approximate band structure for a given multivariate data modelling problem having uncertainties on its nodes and function values.
机译:多元数据建模问题由许多具有相关功能(类)值的节点组成。这些问题的主要目的是构建一个分析模型来表示所考虑问题的特征。由于用于收集数据的设备,工具和/或算法可能无法使用或功能有限,因此数据集可能包含不可避免的错误。即,数据的每个分量仅在包含数据值的间隔内是可靠的。为此,当给定数据需要分析结构时,应确定带结构而不是唯一结构。随着给定数据集的多元性增加,分而治之方法在多元建模问题中变得很重要。基于HDMR的方法允许我们将给定的多变量数据划分为较少变量的数据集,以降低给定问题的复杂性。本文重点研究区间分解HDMR方法,该方法用于确定给定的变量数据建模问题的节点和函数值具有不确定性的近似带结构。

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