Swarm Intelligence-based Decision Trees Induction for Classification — A Brief Analysis

Ikram Bida, Saliha Aouat
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引用次数: 1

Abstract

Decision trees are popular machine learning classifiers, they accurately represent the data in a simple manner that closely resembles human reasoning. Since inducing the optimal decision tree is a NP-hard problem, numerous traditional heuristic-based approaches were introduced to tackle it. However, due to the present data explosion, these greedy local methods did not guarantee the induction of an optimal tree. To address this issue, swarm intelligence algorithms have been currently applied to navigate the search space more appropriately, seeking optimal decision trees. The aim of this research study is to give an analysis overview of the most up-to-date existing swarm-based decision trees induction techniques in a shape of a comparative study, where we discuss the different basics, features, characteristics and results. This survey will serve as a guide for the researches community. However, due to the present data explosion, these greedy local methods did not guarantee the induction of an optimal tree. To address this issue, swarm intelligence algorithms have been currently applied to navigate the search space more appropriately, seeking optimal decision trees. The aim of this research study is to give an analysis overview of the most up-to-date existing swarm-based decision trees induction techniques in a shape of a comparative study, where we discuss the different basics, features, characteristics and results. This survey will serve as a guide for the researches community. The aim of this research study is to give an analysis overview of the most up-to-date existing swarm-based decision trees induction techniques in a shape of a comparative study, where we discuss the different basics, features, characteristics and results. This survey will serve as a guide for the researches community.
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基于群体智能的分类决策树归纳分析
决策树是一种流行的机器学习分类器,它们以一种非常类似于人类推理的简单方式准确地表示数据。由于诱导最优决策树是一个np困难问题,许多传统的基于启发式的方法被引入来解决它。然而,由于目前的数据爆炸,这些贪婪的局部方法并不能保证归纳出最优树。为了解决这个问题,群体智能算法目前被应用于更合适地导航搜索空间,寻求最优决策树。本研究的目的是以比较研究的形式对最新的基于群体的决策树归纳技术进行分析概述,讨论不同的基础、特征、特征和结果。本调查将对科研界起到指导作用。然而,由于目前的数据爆炸,这些贪婪的局部方法并不能保证归纳出最优树。为了解决这个问题,群体智能算法目前被应用于更合适地导航搜索空间,寻求最优决策树。本研究的目的是以比较研究的形式对最新的基于群体的决策树归纳技术进行分析概述,讨论不同的基础、特征、特征和结果。本调查将对科研界起到指导作用。本研究的目的是以比较研究的形式对最新的基于群体的决策树归纳技术进行分析概述,讨论不同的基础、特征、特征和结果。本调查将对科研界起到指导作用。
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