Ordinal classification of depression spatial hot-spots of prevalence

M. Pérez-Ortiz, Pedro Antonio Gutiérrez, C. García-Alonso, L. Salvador-Carulla, J. Salinas-Pérez, C. Hervás‐Martínez
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引用次数: 9

Abstract

In this paper we apply and test a recent ordinal algorithm for classification (Kernel Discriminant Learning Ordinal Regression, KDLOR), in order to recognize a group of geographically close spatial units with a similar prevalence pattern significantly high (or low), which are called hot-spots (or cold-spots). Different spatial analysis techniques have been used for studying geographical distribution of a specific illness in mental health-care because it could be useful to organize the spatial distribution of health-care services. Ordinal classification is used in this problem because the classes are: spatial unit with depression, spatial unit which could present depression and spatial unit where there is not depression. It is shown that the proposed method is capable of preserving the rank of data classes in a projected data space for this database. In comparison to other standard methods like C4.5, SVMRank, Adaboost, and MLP nominal classifiers, the proposed KDLOR algorithm is shown to be competitive.
抑郁症流行空间热点的有序分类
在本文中,我们应用并测试了一种最新的有序分类算法(Kernel Discriminant Learning ordinal Regression, KDLOR),以识别一组地理上接近的空间单元,这些空间单元具有明显高(或低)的相似流行模式,称为热点(或冷点)。不同的空间分析技术已用于研究精神保健中特定疾病的地理分布,因为它可能有助于组织保健服务的空间分布。在这个问题中使用了有序分类,因为分类是:有抑郁的空间单元,可能出现抑郁的空间单元和不存在抑郁的空间单元。结果表明,该方法能够在投影数据空间中保持数据类的秩。与C4.5、SVMRank、Adaboost和MLP标称分类器等其他标准方法相比,KDLOR算法具有一定的竞争力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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