层次分析法,C4.5,粒子群优化算法[j]

Dafiz Adi Nugroho, C. Widodo, R. Gernowo
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引用次数: 0

摘要

决策树C4.5在确定分类方面被广泛应用于各个研究领域,但决策树C4.5仍然存在弱点,其中一个弱点就是不能对每个备选方案进行排序。本研究针对决策树C4.5的不足,结合层次分析法(AHP)方法、决策树C4.5方法和粒子群优化(PSO)方法进行员工晋升推荐分类案例研究。研究首先从访谈结果中确定标准和加权标准,然后用AHP处理以产生员工评级和分类过程的资格标签。分类过程采用决策树C4.5方法,并通过粒子群算法进行优化,生成员工晋升资格数据。AHP、决策树C4.5和PSO方法的联合研究结果表明,AHP可以基于绩效和潜力标准产生员工评级,采用PSO的决策树C4.5分类和优化准确率达到95.80%,而未经PSO优化的决策树C4.5方法准确率为93.40%。根据本研究的结果进行排名和分类,可以作为员工晋升的依据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Kombinasi Analytical Hierarchy Process, C4.5, dan Particle Swarm Optimization pada Klasifikasi Pegawai
Decision Tree C4.5 is widely implemented in various research fields in determining classification, but there are still weaknesses in Decision Tree C4.5, one of which is that it cannot rank each alternative. In this study, to overcome the weakness of Decision Tree C4.5, a combination of Analytical Hierarchy Process (AHP) methods, Decision Tree C4.5, and Particle Swarm Optimization (PSO) methods is proposed in the case study of employee classification for promotion recommendations. The research begins by determining the criteria and weighting criteria from the interview results which are then processed with AHP to produce employee ratings and eligibility labels for the classification process. The classification process uses the Decision Tree C4.5 method which is optimized with the PSO algorithm so as to produce employee eligibility data for promotions. The results of the combined research of AHP, Decision Tree C4.5, and PSO methods show that AHP can produce employee ratings based on performance and potential criteria, and Decision Tree C4.5 classification and optimization with PSO have better accuracy results, namely 95.80% compared to Decision Tree C4.5 method without PSO optimization is 93.40%. Based on the results of the ranking and classification of this research can be used as a basis for promotion of employees.
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