KNNTree:一种改进k近邻分类的决策树方法

Niful Islam, Most. Fatema-Tuj-Jahra, Md. Tarek Hasan, D. Farid
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引用次数: 1

摘要

监督学习中的分类是机器学习和数据科学中的主要问题之一。k -最近邻(KNN)和决策树(DT)是最广泛使用的分类技术之一,通常应用于单模型和集成过程。KNN被称为懒惰学习者,因为它不从训练数据中建立任何决策线。另一方面,DT是一种自上而下的递归分治技术,用于分类和回归问题。DT具有不需要先验知识和特征的非线性关系不影响树性能等优点。本文提出了一种新的学习算法KNNTree,它是KNN算法和DT算法的混合模型。提出的模型基本上是一个决策树,但叶节点被KNN分类器取代。我们在加州大学欧文分校机器学习存储库的10个基准数据集上用KNN和DT算法测试了所提出的方法,发现所提出的方法优于KNN和DT分类器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
KNNTree: A New Method to Ameliorate K-Nearest Neighbour Classification using Decision Tree
Classification in supervised learning is one of the major issues in machine learning and data science. K-Nearest Neighbour (KNN) and Decision Tree (DT) are one of the most widely used classification techniques that are commonly applying for single model and ensemble processes. KNN is known as lazy learner as it doesn't build any decision line from the training data. DT, on the other hand, is a top-down recursive divide-and-conquer technique that used for both classification and regression problems. DT has several advantages e.g, is requires little prior knowledge and non-linear relationship of features don't affect the tree performance. In this paper, we have proposed a new learning algorithm named KNNTree which is a hybrid model of KNN and DT algorithms. The proposed model is basically a decision tree, but leaf nodes are replaced by the KNN classifier. We have tested the proposed method with KNN and DT algorithms on 10 benchmark datasets taken from UC Irvine Machine Learning Repository and found the proposed method outperforms both KNN and DT classifiers.
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