不同数据集中不同数据挖掘分类技术的影响

S. H. Haji, A. Abdulazeez, D. Zeebaree, F. Y. Ahmed, D. A. Zebari
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引用次数: 1

摘要

数据挖掘是通过处理来自不同观点的大量数据并将其组合成有价值的信息来寻找知识的过程;数据挖掘已经成为人类生活各个方面的重要组成部分。它用于识别大量数据中被掩盖的模式。分类方法是监督学习方法,它将数据项分类到已知的类别中。从输入数据集中创建分类模型是数据挖掘中最有益的技术之一;这些方法通常创建用于预测数据中未来模式的模型。本研究评估了支持向量机(SVM)、Naïve贝叶斯(NB)、J48和神经网络(NN)等不同分类器算法的有效性,并将这些算法应用于多个数据集,以确定算法的性能。所有技术都在机器学习平台WEKA中进行了10倍交叉验证。根据这项研究的发现,没有一种算法对每个数据集都表现得最好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Impact of Different Data Mining Classification Techniques in Different Datasets
Data Mining is the process of finding knowledge through the processing of massive amounts of data from different viewpoints and combining them into valuable information; data mining has been a crucial part in various aspects of human life. It is used to recognize the covered up patterns in a huge amount of data. Classification methods are supervised learning methods that categorize the data item into known categories. Creating classification models from an input dataset is one of the most beneficial techniques in data mining; these methods typically create models that are used to forecast future patterns in data. This work has been done to assess the effectiveness of different classifiers algorithms such as Support Vector Machine (SVM), Naïve Bayes (NB), J48, and Neural Network (NN), these algorithms were applied on several datasets to determine the performance of the algorithm. All techniques were used with 10-fold cross-validation in the machine learning platform WEKA. According to the study’s findings, no algorithm has consistently performed best for each dataset.
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