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A State of Art Techniques on Machine Learning Algorithms: A Perspective of Supervised Learning Approaches in Data Classification

机译:机器学习算法的最新技术:数据分类中的监督学习方法

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Machine Learning (ML) is a kind of Artificial Intelligence (AI) technique which allows the system to obtain knowledge with no explicit programming. The main intention of ML technique is to enable the computers to learn with no human assistance. ML is mainly divided into three categories namely supervised, unsupervised and semi-supervised learning approaches. Supervised algorithms need humans to give input and required output, in addition to providing feedback about the prediction accuracy in the training process. Unsupervised learning approaches are contrast to supervised learning approaches where it does not require any training process. But, supervised learning approaches are simpler than unsupervised learning approaches. This paper reviews the supervised learning approaches which are widely used in data classification process. The techniques are reviewed on the basis of aim, methodology, advantages and disadvantages. Finally, the readers can get an overview of supervised ML approaches in terms of data classification.
机译:机器学习(ML)是一种人工智能(AI)技术,它使系统无需显式编程即可获取知识。机器学习技术的主要目的是使计算机能够在无需人工协助的情况下进行学习。机器学习主要分为三类,即有监督,无监督和半监督学习方法。监督算法除了提供有关训练过程中预测准确性的反馈外,还需要人工提供输入和所需的输出。无监督学习方法与无监督学习方法形成对比,无监督学习方法不需要任何培训过程。但是,有监督的学习方法比无监督的学习方法更简单。本文回顾了在数据分类过程中广泛使用的监督学习方法。这些技术是根据目的,方法,优点和缺点进行审查的。最后,读者可以从数据分类的角度对监督的机器学习方法进行概述。

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