The improved ensemble classification technique using Wolf algorithm

Duangjai Jitkongchuen, W. Paireekreng
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Abstract

The rise of data mining leads to the data-oriented society and focusing on data analytics. Several classification techniques have been investigated to find the optimized model for data prediction. This includes the enhancing the performance of the model. Grey Wolf Optimizer is the one of novel approach to solve NP-hard problems. However, the algorithm address the general situation. To solve the customized situation, the adapted algorithm needs to be explored. This research proposes the Ensemble Featured-Wolf (EF-Wolf) algorithm which includes the feature selection stage and implements ensemble technique to optimize the function selection problem in classification. The number of the packs of the wolf can help to select the most optimized functions to selection the most relevant features in the dataset. In addition, the packs ensemble of the relevant features can determine the feature selection of the dataset. The experiment shows the comparison among classification techniques with binary and multiclass datasets. The results show that EF-Wolf 5-pack mostly performs better results in terms of accuracy rate compared to other techniques.
改进的基于Wolf算法的集成分类技术
数据挖掘的兴起导致了以数据为导向的社会和对数据分析的关注。研究了几种分类技术,以寻找数据预测的优化模型。这包括增强模型的性能。灰狼优化器是求解np困难问题的一种新颖方法。然而,该算法解决了一般情况。为了解决定制的情况,需要探索自适应算法。本文提出了包含特征选择阶段的集成特征狼(EF-Wolf)算法,并利用集成技术优化分类中的函数选择问题。狼的数量可以帮助选择最优化的函数来选择数据集中最相关的特征。此外,相关特征的包集成可以决定数据集的特征选择。实验对二分类和多分类数据集的分类技术进行了比较。结果表明,EF-Wolf 5-pack在准确率方面大多优于其他技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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