Contemplation of Machine Learning Algorithm under Distinct Datasets

Kushagra Shah, P. Chaturvedi, Akagra Jain
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Abstract

The paper analyses machine learning and statistics classification under supervised learning approach. The grail of this study is collation of Machine Learning on variegated datasets that are contemplated and compared on the basis of two important parameters viz. time and accuracy. For the purpose of study, 6 different supervised Machine Learning algorithms are implemented on datasets in WEKA tools by percentage splitting method in which 66% of the total data have been used to train the model and 34% is used to test the efficiency of the model. As an out-turn, general comparison is produced, guiding researchers in their area of interest and to choose best available algorithm depending on the dataset classification. The main objective of this paper is to provide the general comparison between variegated machine learning algorithms and which is best suitable and efficient for a particular situation as every algorithm varies according to the area of application and single algorithm is not surpassing in every scenario.
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不同数据集下机器学习算法的思考
本文分析了监督学习方法下的机器学习和统计分类。这项研究的目标是在不同的数据集上整理机器学习,这些数据集是基于两个重要参数即时间和准确性进行考虑和比较的。为了研究目的,在WEKA工具的数据集上,采用百分比分割的方法实现了6种不同的有监督机器学习算法,其中66%的数据用于训练模型,34%用于测试模型的效率。作为结果,产生一般比较,指导研究人员在他们感兴趣的领域,并根据数据集分类选择最佳的可用算法。本文的主要目的是提供各种机器学习算法之间的一般比较,以及哪种算法最适合于特定情况,因为每种算法根据应用领域而变化,并且单一算法在每种情况下都不会超越。
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