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Ensemble quantile classifier

机译:合奏定量分类器

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摘要

Both the median-based classifier and the quantile-based classifier are useful for discriminating high-dimensional data with heavy-tailed or skewed inputs. But these methods are restricted as they assign equal weight to each variable in an unregularized way. The ensemble quantile classifier is a more flexible regularized classifier that provides better performance with high-dimensional data, asymmetric data or when there are many irrelevant extraneous inputs. The improved performance is demonstrated by a simulation study as well as an application to text categorization. It is proven that the estimated parameters of the ensemble quantile classifier consistently estimate the minimal population loss under suitable general model assumptions. It is also shown that the ensemble quantile classifier is Bayes optimal under suitable assumptions with asymmetric Laplace distribution inputs. (C) 2019 Elsevier B.V. All rights reserved.
机译:基于中位的分类器和基于分位式的分类器可用于区分具有重尾或偏斜输入的高维数据。 但这些方法被限制为以不断的方式为每个变量分配平等权重。 集合定量分类器是一种更灵活的正则化分类器,可提供具有高维数据,不对称数据的更好性能,或者存在许多无关的无关输入。 通过模拟研究以及文本分类的应用程序来证明改进的性能。 据证正,集合定量分类器的估计参数始终如一地估计合适的一般模型假设下的最小群体损失。 还表明,集合定量分类器是贝叶斯在具有不对称的LAPLACE分布输入的合适假设下最佳。 (c)2019年Elsevier B.V.保留所有权利。

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