Implementing of Decision Tree Algorithm using R-Studio and Java

Madhavi Katamaneni, Geetha Guttikonda, M. Suneetha
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引用次数: 1

Abstract

Decision tree algorithm is most popular for classification in machine learning and uses discrete data for classification. Information gain or Gini index is used for the entropy calculation in order to classify the given data. Decision tree can be implemented in several programming languages and many data mining tools uses this algorithm. Every implementation has its own advantages and disadvantages. To understand the difference between two implementations R-studio and Java. This paper explains about two different implementation methods gives the best one among two. We mainly focus on pros and cons of these two implementation methods
决策树算法的R-Studio和Java实现
决策树算法是机器学习中最常用的分类算法,它使用离散数据进行分类。信息增益或基尼指数用于熵计算,以便对给定数据进行分类。决策树可以用多种编程语言实现,许多数据挖掘工具都使用该算法。每种实现都有自己的优点和缺点。要了解R-studio和Java两种实现之间的区别。本文介绍了两种不同的实现方法,给出了两种方法中最好的一种。我们主要关注这两种实现方法的优缺点
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