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首页> 外文期刊>Multivariate behavioral research >Robust mokken scale analysis by means of the forward search algorithm for outlier detection
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Robust mokken scale analysis by means of the forward search algorithm for outlier detection

机译:通过前向搜索算法进行健壮的可可尺度分析,以进行离群值检测

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摘要

Exploratory Mokken scale analysis (MSA) is a popular method for identifying scales from larger sets of items. As with any statistical method, in MSA the presence of outliers in the data may result in biased results and wrong conclusions. The forward search algorithm is a robust diagnostic method for outlier detection, which we adapt here to identify outliers in MSA. This adaptation involves choices with respect to the algorithm's objective function, selection of items from samples without outliers, and scalability criteria to be used in the forward search algorithm. The application of the adapted forward search algorithm for MSA is demonstrated using real data. Recommendations are given for its use in practical scale analysis.
机译:探索性莫肯天平分析(MSA)是一种从大型项目中识别天平的流行方法。与任何统计方法一样,在MSA中,数据中存在异常值可能会导致结果有偏差和结论错误。前向搜索算法是一种用于异常值检测的强大诊断方法,在此我们将其应用于识别MSA中的异常值。这种适应包括有关算法目标函数的选择,从样本中选择没有异常值的项目以及在正向搜索算法中使用的可伸缩性标准。使用真实数据演示了适用于MSA的自适应正向搜索算法的应用。建议将其用于实际规模分析。

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