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Rank-order principal components. A separation algorithm for ordinal data exploration.

机译:排名主成分。序数数据探索的分离算法。

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In most research studies, much of the information gathered is of qualitative nature. This paper concentrates on items for which multiple rankings exist that shall be combined optimally. This work presents a unsupervised deterministic approach that can be applied to rank-order data for decomposing them into composite signals. On the opposite to other techniques, it does not requite any prior knowledge about the distribution of the signal components. Typically the variables are necessarily dependent because of the inequality relations among them. The mathematical relationships found are of interest in themselves and in the theory of blind source separation (BSS).Multiple rankings of an item set are decomposed into other rankings of these items, each ranking being orthogonal to the others, hence the name of rank-order principal components. We transform the original ranking data into matrices that linearize the optimization problem for its resolution by linear programming.The resolution is sensitive to the distance between the items that is used. Several distances have been tested: the Euclidean distance (Spearman), the rank absolute deviation distance, the Hölder distance, the $chi ^{2}$ distance, etc. The results are concordant.
机译:在大多数研究中,收集到的许多信息都是定性的。本文着重于存在多个等级的项目,这些等级应进行最佳组合。这项工作提出了一种无监督的确定性方法,可以将其应用于排序数据以将其分解为复合信号。与其他技术相反,它不要求任何有关信号分量分布的先验知识。通常,由于变量之间的不平等关系,变量必定是相关的。发现的数学关系本身和盲源分离理论(BSS)都很有趣。一个项目集的多个等级被分解为这些项目的其他等级,每个等级与其他等级正交,因此,等级名称为-订购主要部件。我们将原始排名数据转换为矩阵,该矩阵通过线性编程将优化问题的线性化。分辨率对所使用项目之间的距离敏感。测试了多个距离:欧几里得距离(Spearman),秩绝对偏差距离,Hölder距离,$ \ chi ^ {2} $距离等。结果是一致的。

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