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Learning to Rank Using 1-norm Regularization and Convex Hull Reduction

机译:学习使用1-Norm正规化和凸壳减少等级等级

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The ranking problem appears in many areas of study such as customer rating, social science, economics, and information retrieval. Ranking can be formulated as a classification problem when pair-wise data is considered. However this approach increases the problem complexity from linear to quadratic in terms of sample size. We present in this paper a convex hull reduction method to reduce this impact. We also propose a 1-norm regularization approach to simultaneously find a linear ranking function and to perform feature subset selection. The proposed method is formulated as a linear program. We present experimental results on artificial data and two real data sets, concrete compressive strength data set and Abalone data set.
机译:排名问题出现在许多研究领域,如客户评级,社会科学,经济学和信息检索。当考虑配对数据时,可以将排名作为分类问题。然而,在样本大小方面,这种方法将来自线性的问题复杂性增加到二次。我们在本文中展示了一种凸壳减少方法,以减少这种影响。我们还提出了一个1-Norm正规化方法来同时找到线性排名功能并执行功能子集选择。该方法配制为线性程序。我们在人工数据和两个真实数据集,混凝土压缩强度数据集和鲍鱼数据集上呈现实验结果。

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