Introduction to Supervised Machine Learning for Data Science

M. S. Baladram, A. Koike, Kazunori D. Yamada
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引用次数: 1

Abstract

We present an introduction to supervised machine learning methods with emphasis on neural networks, kernel support vector machines, and decision trees. These methods are representative methods of supervised learning. Recently, there has been a boom in artificial intelligence research. Neural networks are a key concept of deep learning and are the origin of the current boom in artificial intelligence research. Support vector machines are one of the most sophisticated learning methods from the perspective of prediction performance. Its high performance is primarily owing to the use of the kernel method, which is an important concept not only for support vector machines but also for other machine learning methods. Although these methods are the so-called black-box methods, the decision tree is a white-box method, where the judgment criteria of prediction by the predictor can be easily interpreted. Decision trees are used as the base method of ensemble learning, which is a refined learning technique to improve prediction performance. We review the theory of supervised machine learning methods and illustrate their applications. We also discuss nonlinear optimization methods for the machine to learn the training dataset.
数据科学的监督机器学习导论
我们介绍了有监督的机器学习方法,重点是神经网络、核支持向量机和决策树。这些方法都是监督学习的代表性方法。最近,人工智能的研究蓬勃发展。神经网络是深度学习的一个关键概念,也是当前人工智能研究热潮的起源。从预测性能的角度来看,支持向量机是最复杂的学习方法之一。它的高性能主要是由于使用了核方法,核方法不仅对支持向量机而且对其他机器学习方法都是一个重要的概念。虽然这些方法是所谓的黑盒方法,但决策树是一种白盒方法,其中预测者预测的判断标准可以很容易地解释。决策树作为集成学习的基础方法,是一种提高预测性能的精细学习技术。我们回顾了监督机器学习方法的理论,并说明了它们的应用。我们还讨论了机器学习训练数据集的非线性优化方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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