基于鼠标特征的kNN分类实例分组

D. Chudá, Peter Krátky
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引用次数: 5

摘要

电脑鼠标的使用特点可以用来区分网页访问者。当单独使用基本k近邻(kNN)分类器执行分类时,表示用户导航操作的特定数据实例是不够的。我们提出了一种改进的kNN方法,其中相同类的实例组成组。找到最近的邻居是基于测量直方图之间的距离,直方图表示对应组的值的分布。本文对100个网络访问者的数据集进行了一系列实验。它描述了几种距离度量的比较以及不同级别的分组。测量距离的非参数检验统计量与合适的分组大小相结合,显著提高了分类成功率。
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Grouping instances in kNN for classification based on computer mouse features
Computer mouse usage features could be used to distinguish web page visitors. Particular data instances representing user's navigation actions are insufficient when used separately to perform classification with basic k-nearest neighbors (kNN) classifier. We propose a modification of kNN method in which instances of the same class form groups. Finding the nearest neighbors is based on measuring distance between histograms representing distributions of values for the corresponding groups. The paper provides a series of experiments on dataset from 100 web visitors. It describes comparison of several distance metrics as well as different levels of grouping. Combination of non-parametric tests statistics for measuring distance and suitable size of groups improves classification success rate significantly.
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