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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Three new instance selection methods based on local sets: A comparative study with several approaches from a bi-objective perspective
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Three new instance selection methods based on local sets: A comparative study with several approaches from a bi-objective perspective

机译:三种基于局部集的新实例选择方法:从双目标角度对几种方法进行的比较研究

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摘要

The local set is the largest hypersphere centered on an instance such that it does not contain instances from any other class. Due to its geometrical nature, this structure can be very helpful for distance-based classification, such as classification based on the nearest neighbor rule. This paper is focused on instance selection for nearest neighbor classification which, in short, aims to reduce the number of instances in the training set without affecting the classification accuracy. Three instance selection methods based on local sets, which follow different and complementary strategies, are proposed. In an experimental study involving 26 known databases, they are compared with 11 of the most successful state-of-the-art methods in standard and noisy environments. To evaluate their performances, two complementary approaches are applied, the Pareto dominance relation and the Technique for Order Preference by Similarity to Ideal Solution. The results achieved by the proposals reveal that they are among the most effective methods in this field. (C) 2014 Elsevier Ltd. All rights reserved.
机译:本地集是以实例为中心的最大超球面,因此它不包含任何其他类的实例。由于其几何性质,此结构对于基于距离的分类(例如基于最近邻居规则的分类)可能非常有帮助。本文着重于最近邻居分类的实例选择,简而言之,其目的是在不影响分类准确性的情况下减少训练集中的实例数量。提出了三种基于局部集的实例选择方法,它们遵循不同的互补策略。在一项涉及26个已知数据库的实验研究中,将它们与标准和嘈杂环境中11种最成功的最新方法进行了比较。为了评估它们的性能,应用了两种互补的方法,即帕累托优势关系和通过与理想解的相似性进行顺序偏好的技术。这些建议所取得的结果表明,它们是该领域最有效的方法之一。 (C)2014 Elsevier Ltd.保留所有权利。

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