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首页> 外文期刊>Psychometrika >The K-INDSCAL Model for Heterogeneous Three-Way Dissimilarity Data
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The K-INDSCAL Model for Heterogeneous Three-Way Dissimilarity Data

机译:异构三向相异数据的K-INDSCAL模型

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A weighted Euclidean distance model for analyzing three-way dissimilarity data (stimuli by stimuli by subjects) for heterogeneous subjects is proposed. First, it is shown that INDSCAL may fail to identify a common space representative of the observed data structure in presence of heterogeneity. A new model that removes the rotational invariance of the classical multidimensional scaling problem and specifies K common homogeneous spaces is proposed. The model, called mixture INDSCAL in K classes, or briefly K-INDSCAL, still includes individual saliencies. However, the large number of parameters in K-INDSCAL may produce instability of the estimates and therefore a parsimonious model will also be discussed. The parameters of the model are estimated in a least-squares fitting context and an efficient coordinate descent algorithm is given. The usefulness of K-INDSCAL is demonstrated by both artificial and real data analyses.
机译:提出了一种加权欧几里德距离模型,用于分析异构对象的三向差异数据(对象的刺激)。首先,表明存在异质性时,INDSCAL可能无法识别代表观察到的数据结构的公共空间。提出了一种新模型,该模型消除了经典多维缩放问题的旋转不变性,并指定了K个公共齐次空间。该模型在K类中称为混合INDSCAL,或简称为K-INDSCAL,该模型仍包含各个显着性。但是,K-INDSCAL中的大量参数可能会导致估计值不稳定,因此还将讨论简约模型。在最小二乘拟合上下文中估计模型的参数,并给出有效的坐标下降算法。人工和实际数据分析都证明了K-INDSCAL的有用性。

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