基于最近邻的实例选择用于分类

G. Yu, Jin Tian, Minqiang Li
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引用次数: 4

摘要

随着大数据规模的不断扩大,分类器通常面临难以解决的计算和存储问题。此外,复杂分类问题中的决策边界通常是复杂和迂回的。在太多的实例上建模有时会导致对噪声过度敏感,从而降低学习的准确性。基于部分但重要的数据,实例选择是提高分类性能的有效方法。提出了一种新的基于最近敌人信息的实例选择算法。数据集被分成几个分区,对应于实例最近的敌人。在每个分区中,根据分布信息选择有代表性的实例来表示决策边界的两侧。然后采用支持向量机(SVM)对这些代表性实例进行分类建模。实验结果表明,该算法具有较高的分类精度和较小的选择实例规模,优于传统的实例选择方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Nearest neighbor-based instance selection for classification
With the increasing size of big data, classifiers usually suffer from intractable computing and storage issues. Moreover, decision boundaries in complex classification problems are usually complicated and circuitous. Modeling on too many instances can sometimes cause oversensitivity to noise and degrade the learning accuracies. Instance selection offers an effective way to improve classification performance based on partial but significant data. This paper presents a novel instance selection algorithm based on nearest enemy information. The dataset is divided into several partitions corresponding to instances' nearest enemies. In every partition, representative instances are selected based on the distribution information to represent both sides of decision boundary. A support vector machine (SVM) is then adopted to conduct the classification model based on these representative instances. Experimental results illustrate that the proposed algorithm outperforms some conventional instance selection methods with higher classification accuracy and smaller size of selected instances.
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