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Uncovering and Displaying the Coherent Groups of Rank Data by Exploratory Riffle Shuffling

机译:通过探索性浅滩洗牌揭开和显示相干等级数据

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Let n respondents rank order d items, and suppose that . Our main task is to uncover and display the structure of the observed rank data by an exploratory riffle shuffling procedure which sequentially decomposes the n voters into a finite number of coherent groups plus a noisy group: where the noisy group represents the outlier voters and each coherent group is composed of a finite number of coherent clusters. We consider exploratory riffle shuffling of a set of items to be equivalent to optimal two blocks seriation of the items with crossing of some scores between the two blocks. A riffle shuffled coherent cluster of voters within its coherent group is essentially characterized by the following facts: 1) Voters have identical first TCA factor score, where TCA designates taxicab correspondence analysis, an L1 variant of correspondence analysis;2) Any preference is easily interpreted as riffle shuffling of its items;3) The nature of different riffle shuffling of items can be seen in the structure of the contingency table of the first-order marginals constructed from the Borda scorings of the voters;4) The first TCA factor scores of the items of a coherent cluster are interpreted as Borda scale of the items. We also introduce a crossing index, which measures the extent of crossing of scores of voters between the two blocks seriation of the items. The novel approach is explained on the benchmarking SUSHI data set, where we show that this data set has a very si>mple structure, which can also be communicated in a tabular form.
机译:让N个受访者排名令D物品,并假设这一点。我们的主要任务是通过探索和显示观察到的等级数据的结构,通过探索性的Riffle Shuffling程序,该程序顺序地将N选民分解为有限数量的相干群体加上嘈杂的组:嘈杂的组代表了异常选民和每个连贯的选民组由有限数量的连贯簇组成。我们考虑了一组项目的探索性升级,相当于最佳的两个块系列的物品,其两个块之间的一些分数交叉。在其相干组内的渐变次组的选民的渐变次组的选民基本上是以下的特征:1)选民具有相同的第一个TCA因子评分,其中TCA指定出租车对应分析,对应分析的L1变体; 2)容易解释任何偏好作为其物品的升降裂缝; 3)在从选民的波尔达评分的一阶边缘地区的一阶边缘地区的差价表的结构中可以看出不同的浅滩的性质; 4)第一个TCA因子分数相干群集的项目被解释为项目的BORDA比例。我们还介绍了交叉指数,该指数衡量了物品的两个嵌段系列之间的选民分数的交叉程度。在基准寿司数据集上解释了新的方法,其中我们表明该数据集具有非常SI Mple结构,其也可以以表格形式传送。

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