IMPROVING CLASSIFICATION PERFORMANCE USING ENSEMBLE LEARNING APPROACH

Jyotsana Goyal
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Abstract

The data mining techniques are used for evaluation of the data in order to find and represent the data in such manner by which the applications are becomes beneficial. Therefore, different kinds of computational algorithms and modeling’s are incorporated for analyzing the data. These computational algorithms are help to understand the data patterns and their application utility. The data mining algorithms supports supervised as well as unsupervised techniques of data analysis. This work is aimed to investigate about the supervised learning technique specifically performance improvements on classification techniques. The proposed classification model includes the multiple classifiers namely Bayesian classifier, k-nearest neighbor and the c4.5 decision tree algorithm. By nature of the outcomes and the modeling of the data these algorithms are functioning differently from each other. Thus, a weight based classification technique is introduced in this work. The weight is a combination of outcomes provided by the implemented three classifiers in terms of their predicted class labels. Using the weighted outcomes, the final class label for the input data instance is decided. The implementation of the proposed working model is performed with the help of JAVA and WEKA classes. The results obtained by experimentation of the proposed approach with the vehicle data set demonstrate the high accurate classification results. Thus, the proposed model is an effective classification technique as compared to single model implementation for classification task.
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使用集成学习方法提高分类性能
数据挖掘技术用于对数据进行评估,以便以使应用程序受益的方式查找和表示数据。因此,采用不同的计算算法和建模方法对数据进行分析。这些计算算法有助于理解数据模式及其应用程序的实用性。数据挖掘算法支持有监督和无监督的数据分析技术。本工作旨在研究监督学习技术,特别是对分类技术的性能改进。提出的分类模型包括贝叶斯分类器、k近邻分类器和c4.5决策树算法等多个分类器。根据结果和数据建模的性质,这些算法的功能彼此不同。因此,本文引入了一种基于权重的分类技术。权重是实现的三个分类器根据其预测的类标签提供的结果的组合。使用加权结果,确定输入数据实例的最终类标号。建议的工作模型的实现是在JAVA和WEKA类的帮助下完成的。在车辆数据集上进行了实验,结果表明该方法具有较高的分类准确率。因此,与单一模型实现相比,该模型是一种有效的分类技术。
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