Machine Learning: Fundamentals

Myeongsu Kang, N. J. Jameson
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引用次数: 8

Abstract

Prognostics and health management (PHM) facilitates maintenance decision‐making and provides usage feedback for the product design and validation process. Electronic component and product manufacturers need new ways to gain insights from the massive volume of data recently streaming in from their systems and sensors, and this can be accomplished by using machine learning (ML). This chapter provides the fundamentals of ML. ML algorithms can be divided into the following four categories depending on the amount and type of supervision they need while training: supervised, unsupervised, semi‐supervised, and reinforcement learning. ML algorithms can be classified into two different learning methods based on whether or not the algorithms can learn incrementally from a stream of incoming data: batch and online learning. Probability theory plays a significant role in ML, specifically as the design of learning algorithms often depends on probabilistic assumption of the data.
机器学习:基础
预测和健康管理(PHM)有助于维护决策,并为产品设计和验证过程提供使用反馈。电子元件和产品制造商需要新的方法来从最近从他们的系统和传感器流入的大量数据中获得见解,这可以通过使用机器学习(ML)来实现。本章提供了机器学习的基础知识。机器学习算法可以分为以下四类,这取决于它们在训练时需要的监督的数量和类型:监督、无监督、半监督和强化学习。基于算法是否可以从传入数据流中增量学习,ML算法可以分为两种不同的学习方法:批处理和在线学习。概率论在机器学习中扮演着重要的角色,特别是学习算法的设计往往依赖于数据的概率假设。
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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