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KNN Model-Based Approach in Classification

机译:基于KNN模型的分类方法

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The k-Nearest-Neighbours (kNN) is a simple but effective method for classification. The major drawbacks with respect to kNN are (1) its low efficiency - being a lazy learning method prohibits it in many applications such as dynamic web mining for a large repository, and (2) its dependency on the selection of a "good value" for k. In this paper, we propose a novel kNN type method for classification that is aimed at overcoming these shortcomings. Our method constructs a kNN model for the data, which replaces the data to serve as the basis of classification. The value of k is automatically determined, is varied for different data, and is optimal in terms of classification accuracy, The construction of the model reduces the dependency on k and makes classification faster. Experiments were carried out on some public datasets collected from the UCI machine learning repository in order to test our method. The experimental results show that the kNN based model compares well with C5.0 and kNN in terms of classification accuracy, but is more efficient than the standard kNN.
机译:K-最近邻居(KNN)是一种简单但有效的分类方法。关于KNN的主要缺点是(1)其低效率 - 是一种懒惰的学习方法,禁止它在许多应用程序中,例如用于大型存储库的动态网挖,以及(2)其对“好价值”的选择依赖性叉子。在本文中,我们提出了一种用于分类的新型KNN型方法,旨在克服这些缺点。我们的方法为数据构造了一个KNN模型,它将数据替换为分类的基础。自动确定k的值,改变不同的数据,并且在分类准确性方面是最佳的,模型的构造降低了对k的依赖性,并使分类更快。在从UCI机器学习存储库中收集的一些公共数据集上进行实验,以便测试我们的方法。实验结果表明,基于KNN的模型在分类精度方面与C5.0和KNN相比,但比标准KNN更有效。

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