支持向量机功能的优缺点

Sasan Karamizadeh, Shahidan M. Abdullah, M. Halimi, J. Shayan, Mohammad Javad Rajabi
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引用次数: 143

摘要

支持向量机(SVM)是最有效的机器学习算法之一,自20世纪90年代提出以来,主要用于模式识别。支持向量机的广泛应用,如人脸识别和语音识别、人脸检测和图像识别等都使它成为一种非常有用的算法。这也被应用于许多模式分类问题,如图像识别、语音识别、文本分类、人脸检测和故障卡检测。统计数据来自2000年至2013年期间发表的期刊和电子资源。模式识别旨在根据先验知识或从原始数据中提取的统计信息对数据进行分类,是许多学科中数据分离的有力工具。支持向量机(SVM)是生物识别中的一种算法。它是一种统计学技术,使用正交变换将一组可能相关变量的观测值转换为一组线性不相关变量的值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Advantage and drawback of support vector machine functionality
Support Vector Machine(SVM)is one of the most efficient machine learning algorithms, which is mostly used for pattern recognition since its introduction in 1990s. SVMs vast variety of usage, such as face and speech recognition, face detection and image recognition has turned it into a very useful algorithm. This has also been applied to many pattern classification problems such as image recognition, speech recognition, text categorization, face detection, and faulty card detection.Statistics was collected from journals and electronic sources published in the period of 2000 to 2013. Pattern recognition aims to classify data based on either a priori knowledge or statistical information extracted from raw data, which is a powerful tool in data separation in many disciplines. The Support Vector Machine (SVM) is a kind of algorithms in biometrics. It is a statistics technical and used orthogonal transformation to convert a set of observations of possibly correlated variables into a set of values of linearly uncorrelated variables.
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