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Distance-based tree models for ranking data

机译:基于距离的树模型对数据进行排名

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摘要

Ranking data has applications in different fields of studies, like marketing, psychology and politics. Over the years, many models for ranking data have been developed. Among them, distance-based ranking models, which originate from the classical rank correlations, postulate that the probability of observing a ranking of items depends on the distance between the observed ranking and a modal ranking. The closer to the modal ranking, the higher the ranking probability is. However, such a model basically assumes a homogeneous population and does not incorporate the presence of covariates. To overcome these limitations, we combine the strength of a tree model and the existing distance-based models to build a model that can handle more complexity and improve prediction accuracy. We will introduce a recursive partitioning algorithm for building a tree model with a distance-based ranking model fitted at each leaf. We will also consider new weighted distance measures which allow different weights for different ranks in formulating more flexible distance-based tree models. Finally, we will apply the proposed methodology to analyze a ranking dataset of Inglehart's items collected in the 1999 European Values Studies.
机译:排名数据在营销,心理学和政治学等不同研究领域中都有应用。多年来,已经开发了许多用于对数据进行排名的模型。其中,源自经典排名相关性的基于距离的排名模型假定观察到项目排名的概率取决于观察到的排名与模态排名之间的距离。越接近模态排名,排名概率越高。但是,这样的模型基本上假设一个同质的总体,并且不包含协变量的存在。为了克服这些限制,我们结合了树模型和现有的基于距离的模型的优势来构建可以处理更多复杂性并提高预测准确性的模型。我们将介绍一种递归分区算法,用于构建树模型,并在每片叶子上安装基于距离的排名模型。我们还将考虑新的加权距离度量,该度量允许在制定更灵活的基于距离的树模型时为不同等级使用不同的加权。最后,我们将使用所提出的方法来分析在1999年欧洲价值观研究中收集到的英格哈特商品的排名数据集。

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