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首页> 外文期刊>Journal of Mathematical Psychology >Avoiding the dangers of averaging across subjects when using multidimensional scaling
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Avoiding the dangers of averaging across subjects when using multidimensional scaling

机译:避免在使用多维缩放时跨对象平均的危险

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Ashby, Maddox and Lee (Psychological Science, 5 (3) 144) argue that it can be inappropriate to fit multidimensional scaling (MDS) models to similarity or dissimilarity data that have been averaged across subjects. They demonstrate that the averaging process tends to make dissimilarity data more amenable to metric representations, and conduct a simulation study showing that noisy data generated using one distance metric, when averaged, may be better fit using a different distance metric. This paper argues that a Bayesian measure of MDS models has the potential to address these difficulties, because it takes into account data-fit, the number of dimensions used by an MDS representation, and the precision of the data. A method of analysis based on the Bayesian measure is demonstrated through two simulation studies with accompanying theoretical analysis. In the first study, it is shown that the Bayesian analysis rejects those MDS models showing better fit to averaged data using the incorrect distance metric, while accepting those that use the correct metric. In the second study, different groups of simulated 'subjects' are assumed to use different underlying configurations. In this case, the Bayesian analysis rejects MDS representations where a significant proportion of subjects use different configurations, or when their dissimilarity judgments contain significant amounts of noise. It is concluded that the Bayesian analysis provides a simple and principled means for systematically accepting and rejecting MDS models derived from averaged data.
机译:Ashby,Maddox和Lee(Psychological Science,5(3)144)认为,将多维标度(MDS)模型与跨学科平均的相似性或不相似性数据拟合可能是不合适的。他们证明了求平均过程趋于使相异性数据更适合度量表示,并进行了仿真研究,结果表明,使用一个距离度量生成的噪声数据平均后,可能更适合使用不同的距离度量。本文认为,贝叶斯MDS模型的度量有可能解决这些困难,因为它考虑了数据拟合,MDS表示所使用的维数以及数据的精度。通过两项模拟研究以及相应的理论分析,论证了一种基于贝叶斯测度的分析方法。在第一个研究中,表明贝叶斯分析拒绝使用正确的距离度量显示那些更适合平均数据的MDS模型,而接受使用正确度量的模型。在第二项研究中,假定不同组的模拟“对象”使用不同的基础配置。在这种情况下,当很大比例的对象使用不同的配置,或者当他们的相异性判断包含大量噪声时,贝叶斯分析会拒绝MDS表示。结论是,贝叶斯分析为系统地接受和拒绝从平均数据得出的MDS模型提供了一种简单而有原则的方法。

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