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Exact methods for variable selection in principal component analysis: Guide functions and pre-selection

机译:主成分分析中变量选择的确切方法:指南功能和预选

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摘要

A variable selection problem is analysed for use in Principal Component Analysis (PCA). In this case, the set of original variables is divided into disjoint groups. The problem resides in the selection of variables, but with the restriction that the set of variables that is selected should contain at least one variable from each group. The objective function under consideration is the sum of the first eigenvalues of the correlation matrix of the subset of selected variables. This problem, with no known prior references, has two further difficulties, in addition to that of the variable selection problem: the evaluation of the objective function and the restriction that the subset of selected variables should also contain elements from all of the groups. Two Branch & Bound methods are proposed to obtain exact solutions that incorporate two strategies: the first one is the use of "fast" guide functions as alternatives to the objective function; the second one is the preselection of variables that help to comply with the latter restriction. From the computational tests, it is seen that both strategies are very efficient and achieve significant reductions in calculation times.
机译:分析了变量选择问题,以供在主成分分析(PCA)中使用。在这种情况下,原始变量集分为不相交的组。问题在于变量的选择,但是受限于所选择的变量集应至少包含每个组中的一个变量。所考虑的目标函数是所选变量子集的相关矩阵的第一特征值之和。除变量选择问题外,这个问题(没有已知的先验参考文献)还有另外两个困难:目标函数的评估和所选变量的子集还应包含所有组元素的限制。为了获得包含两种策略的精确解决方案,提出了两种Branch&Bound方法:第一种是使用“快速”指导函数替代目标函数;第二种是使用“快速”指导函数替代目标函数。第二个是预选变量,以帮助遵守后者的限制。从计算测试中可以看出,这两种策略都是非常有效的,并且可以显着减少计算时间。

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