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首页> 外文期刊>Frontiers in Psychology >Inverse MDS: Inferring Dissimilarity Structure from Multiple Item Arrangements
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Inverse MDS: Inferring Dissimilarity Structure from Multiple Item Arrangements

机译:逆MDS:从多个项目安排中推断不同结构

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The pairwise dissimilarities of a set of items can be intuitively visualized by a 2D arrangement of the items, in which the distances reflect the dissimilarities. Such an arrangement can be obtained by multidimensional scaling (MDS). We propose a method for the inverse process: inferring the pairwise dissimilarities from multiple 2D arrangements of items. Perceptual dissimilarities are classically measured using pairwise dissimilarity judgments. However, alternative methods including free sorting and 2D arrangements have previously been proposed. The present proposal is novel (a) in that the dissimilarity matrix is estimated by “inverse MDS” based on multiple arrangements of item subsets, and (b) in that the subsets are designed by an adaptive algorithm that aims to provide optimal evidence for the dissimilarity estimates. The subject arranges the items (represented as icons on a computer screen) by means of mouse drag-and-drop operations. The multi-arrangement method can be construed as a generalization of simpler methods: It reduces to pairwise dissimilarity judgments if each arrangement contains only two items, and to free sorting if the items are categorically arranged into discrete piles. Multi-arrangement combines the advantages of these methods. It is efficient (because the subject communicates many dissimilarity judgments with each mouse drag), psychologically attractive (because dissimilarities are judged in context), and can characterize continuous high-dimensional dissimilarity structures. We present two procedures for estimating the dissimilarity matrix: a simple weighted-aligned-average of the partial dissimilarity matrices and a computationally intensive algorithm, which estimates the dissimilarity matrix by iteratively minimizing the error of MDS-predictions of the subject’s arrangements. The Matlab code for interactive arrangement and dissimilarity estimation is available from the authors upon request.
机译:一组商品的成对差异可以通过商品的2D排列直观地可视化,其中距离反映了差异。可以通过多维缩放(MDS)获得这种安排。我们提出了一种逆过程的方法:从项目的多个2D排列中推断成对的差异。感知上的差异通常使用成对的差异判断来度量。但是,先前已经提出了包括自由分类和2D排列的替代方法。本提案是新颖的(a)通过“逆MDS”基于项目子集的多种排列来估计相异性矩阵,以及(b)通过旨在为数据提供最佳证据的自适应算法设计子集。差异估算。对象通过鼠标拖放操作来排列项目(在计算机屏幕上以图标表示)。可以将多重安排方法解释为更简单方法的概括:如果每个安排仅包含两个项目,则可以简化为成对的不相似判断,如果将这些项目分类放置为离散的桩,则可以简化为自由排序。多重排列结合了这些方法的优点。它是有效的(因为受试者每次鼠标拖动都会传达许多相似性判断),在心理上很有吸引力(因为根据上下文判断相似性),并且可以表征连续的高维相似性结构。我们提供了两种估算相异度矩阵的程序:部分相异度矩阵的简单加权对齐平均值和计算量大的算法,该算法通过迭代地最小化对象安排的MDS预测误差来估算相异度矩阵。作者可应要求提供用于交互式排列和相异性估计的Matlab代码。

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