A COMPARATIVE STUDY ON PERFORMANCE OF BASIC AND ENSEMBLE CLASSIFIERS WITH VARIOUS DATASETS

Q3 Economics, Econometrics and Finance Applied Computer Science Pub Date : 2023-03-31 DOI:10.35784/acs-2023-08
Archana Gunakala, Afzal Hussain Shahid
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Abstract

Classification plays a critical role in machine learning (ML) systems for processing images, text and high -dimensional data. Predicting class labels from training data is the primary goal of classification. An optimal model for a particular classification problem is chosen on the basis of the model's performance and execution time. This paper compares and analyses the performance of basic as well as ensemble classifiers utilizing 10 -fold cross validation and also discusses their essential concepts, advantages, and disadvantages. In this study five basic classifiers namely Naïve Bayes (NB), Multi-layer Perceptron (MLP), Support Vector Machine (SVM), Decision Tree (DT), and Random Forest (RF) and the ensemble of all the five classifiers along with few more combinations are compared with five University of California Irvine (UCI) ML Repository datasets and a Diabetes Health Indicators dataset from kaggle repository. To analyze and compare the performance of classifiers, evaluation metrics like Accuracy, Recall, Precision, Area Under Curve (AUC) and F-Score are used. Experimental results showed that SVM performs best on two out of the six datasets (Diabetes Health Indicators and waveform), RF performs best for Arrhythmia, Sonar, Tic-tac-toe datasets, and the best ensemble combination is found to be DT+SVM+RF on Ionosphere dataset having respective accuracies 72.58%, 90.38%, 81.63%, 73.59%, 94.78% and 94.01% and the proposed ensemble combinations outperformed over the conventional models for few datasets.
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基于不同数据集的基本分类器和集成分类器性能比较研究
分类在处理图像、文本和高维数据的机器学习系统中起着至关重要的作用。从训练数据中预测类标签是分类的主要目标。针对特定的分类问题,根据模型的性能和执行时间选择最优模型。本文比较分析了基于10倍交叉验证的基本分类器和集成分类器的性能,并讨论了它们的基本概念和优缺点。在本研究中,五个基本分类器,即Naïve贝叶斯(NB),多层感知器(MLP),支持向量机(SVM),决策树(DT)和随机森林(RF),以及所有五个分类器的集合以及更多的组合,与加州大学欧文分校(UCI) ML存储库数据集和来自kaggle存储库的糖尿病健康指标数据集进行了比较。为了分析和比较分类器的性能,使用了准确度、召回率、精度、曲线下面积(AUC)和F-Score等评估指标。实验结果表明,SVM在6个数据集(糖尿病健康指标和波形)中的2个数据集上表现最佳,RF在心律失常、声纳和井字游戏数据集上表现最佳,电离层数据集上DT+SVM+RF的最佳集合组合分别具有72.58%、90.38%、81.63%、73.59%、94.78%和94.01%的准确率,并且所提出的集合组合在少数数据集上优于传统模型。
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来源期刊
Applied Computer Science
Applied Computer Science Engineering-Industrial and Manufacturing Engineering
CiteScore
1.50
自引率
0.00%
发文量
0
审稿时长
8 weeks
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