Improvement of Support Vector Machine Algorithm in Big Data Background

With the rapid development of the Internet and the rapid development of big data analysis technology, data mining has played a positive role in promoting industry and academia. Classification is an important problem in data mining. This paper explores the background and theory of support vector mach...

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Main Authors: Babacar Gaye, Dezheng Zhang, Aziguli Wulamu
Format: Article
Language:English
Published: Hindawi Limited 2021-01-01
Series:Mathematical Problems in Engineering
Online Access:http://dx.doi.org/10.1155/2021/5594899
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spelling doaj-48eeaaf4b19e472db2eccc402586c7042021-06-28T01:51:55ZengHindawi LimitedMathematical Problems in Engineering1563-51472021-01-01202110.1155/2021/5594899Improvement of Support Vector Machine Algorithm in Big Data BackgroundBabacar Gaye0Dezheng Zhang1Aziguli Wulamu2School of Computer and Communication EngineeringSchool of Computer and Communication EngineeringSchool of Computer and Communication EngineeringWith the rapid development of the Internet and the rapid development of big data analysis technology, data mining has played a positive role in promoting industry and academia. Classification is an important problem in data mining. This paper explores the background and theory of support vector machines (SVM) in data mining classification algorithms and analyzes and summarizes the research status of various improved methods of SVM. According to the scale and characteristics of the data, different solution spaces are selected, and the solution of the dual problem is transformed into the classification surface of the original space to improve the algorithm speed. Research Process. Incorporating fuzzy membership into multicore learning, it is found that the time complexity of the original problem is determined by the dimension, and the time complexity of the dual problem is determined by the quantity, and the dimension and quantity constitute the scale of the data, so it can be based on the scale of the data Features Choose different solution spaces. The algorithm speed can be improved by transforming the solution of the dual problem into the classification surface of the original space. Conclusion. By improving the calculation rate of traditional machine learning algorithms, it is concluded that the accuracy of the fitting prediction between the predicted data and the actual value is as high as 98%, which can make the traditional machine learning algorithm meet the requirements of the big data era. It can be widely used in the context of big data.http://dx.doi.org/10.1155/2021/5594899
collection DOAJ
language English
format Article
sources DOAJ
author Babacar Gaye
Dezheng Zhang
Aziguli Wulamu
spellingShingle Babacar Gaye
Dezheng Zhang
Aziguli Wulamu
Improvement of Support Vector Machine Algorithm in Big Data Background
Mathematical Problems in Engineering
author_facet Babacar Gaye
Dezheng Zhang
Aziguli Wulamu
author_sort Babacar Gaye
title Improvement of Support Vector Machine Algorithm in Big Data Background
title_short Improvement of Support Vector Machine Algorithm in Big Data Background
title_full Improvement of Support Vector Machine Algorithm in Big Data Background
title_fullStr Improvement of Support Vector Machine Algorithm in Big Data Background
title_full_unstemmed Improvement of Support Vector Machine Algorithm in Big Data Background
title_sort improvement of support vector machine algorithm in big data background
publisher Hindawi Limited
series Mathematical Problems in Engineering
issn 1563-5147
publishDate 2021-01-01
description With the rapid development of the Internet and the rapid development of big data analysis technology, data mining has played a positive role in promoting industry and academia. Classification is an important problem in data mining. This paper explores the background and theory of support vector machines (SVM) in data mining classification algorithms and analyzes and summarizes the research status of various improved methods of SVM. According to the scale and characteristics of the data, different solution spaces are selected, and the solution of the dual problem is transformed into the classification surface of the original space to improve the algorithm speed. Research Process. Incorporating fuzzy membership into multicore learning, it is found that the time complexity of the original problem is determined by the dimension, and the time complexity of the dual problem is determined by the quantity, and the dimension and quantity constitute the scale of the data, so it can be based on the scale of the data Features Choose different solution spaces. The algorithm speed can be improved by transforming the solution of the dual problem into the classification surface of the original space. Conclusion. By improving the calculation rate of traditional machine learning algorithms, it is concluded that the accuracy of the fitting prediction between the predicted data and the actual value is as high as 98%, which can make the traditional machine learning algorithm meet the requirements of the big data era. It can be widely used in the context of big data.
url http://dx.doi.org/10.1155/2021/5594899
work_keys_str_mv AT babacargaye improvementofsupportvectormachinealgorithminbigdatabackground
AT dezhengzhang improvementofsupportvectormachinealgorithminbigdatabackground
AT aziguliwulamu improvementofsupportvectormachinealgorithminbigdatabackground
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