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Forward Search Algorithm for Robust Influence Analysis in Maximum Likelihood Factor Analysis

机译:最大似然因子分析中鲁棒影响分析的前进搜索算法

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Mainly in regression analysis, numerous methods have been proposed historically for the analysis of the influence of single or multiple observations on the results of analysis. Such a sensitivity or stability problem is not special to the regression analysis, but is common to the other statistical methods including the multivariate methods. We combined the general procedure of the sensitivity analysis and the forward search method to detect the influential observations without suffering from the masking and swamping effect, and compared its performance with the other robust methods numerically. The proposed procedure can be applied to any multivariate methods with minor modification. In this paper we propose and discuss our procedure in maximum likelihood factor analysis (MLFA).
机译:主要在回归分析中,历史上提出了许多方法,用于分析单一或多次观察的影响对分析结果。这种敏感性或稳定性问题对回归分析不特殊,但对于包括多元方法的其他统计方法是常见的。我们组合了敏感性分析的一般程序和前进的搜索方法,以检测有影响力的观察,而不遭受掩蔽和沼泽效果,并在数值上与其他稳健的方法进行比较。所提出的程序可以应用于具有微小修改的任何多变量方法。在本文中,我们提出并讨论了我们在最大似然因子分析(MLFA)中的程序。

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