Research on Algorithm Recommended by Online Education for Big Data

“Big data” is becoming a hot topic in the Internet. The long tail problem of the massive online courses also becomes the biggest headache for operation team of online education. The manner in which the reader wants most courses show to be presented before the user is the key to improve the quality...

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Main Authors: Feng Tao, Cheng Yun
Format: Article
Language:English
Published: EDP Sciences 2015-01-01
Series:SHS Web of Conferences
Subjects:
Online Access:http://dx.doi.org/10.1051/shsconf/20151401002
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spelling doaj-c5d2320013374be3b4a5c8d0c9cbbfdb2021-04-02T14:18:06ZengEDP SciencesSHS Web of Conferences2261-24242015-01-01140100210.1051/shsconf/20151401002shsconf_icitce2014_01002Research on Algorithm Recommended by Online Education for Big DataFeng TaoCheng Yun “Big data” is becoming a hot topic in the Internet. The long tail problem of the massive online courses also becomes the biggest headache for operation team of online education. The manner in which the reader wants most courses show to be presented before the user is the key to improve the quality of online edu-cation. Personalized recommendation system is to discover the readers interests tendency based on the existing user data, project data, and interactive data, thus to provide personalized product recommendation for readers. This article is based on the two kinds of algorithms, namely the content and the collaborative filtering recommendation to propose an improved integration scheme, which can make good use of existing data to discover the useful knowledge for readers’ recommendation. The method firstly solves the sparsity problem in traditional collaborative filtering, and meanwhile we start from the global structure relation of course, to analyze the relationship between the reader and the course more comprehensively. The algorithm to improve the accuracy of recommendation from multiple angles, and provides a feasible method for precise recommendation of online educational video. http://dx.doi.org/10.1051/shsconf/20151401002recommendation algorithmuser interactiononline educationcollaborative filtering recommendationcontent recommendation
collection DOAJ
language English
format Article
sources DOAJ
author Feng Tao
Cheng Yun
spellingShingle Feng Tao
Cheng Yun
Research on Algorithm Recommended by Online Education for Big Data
SHS Web of Conferences
recommendation algorithm
user interaction
online education
collaborative filtering recommendation
content recommendation
author_facet Feng Tao
Cheng Yun
author_sort Feng Tao
title Research on Algorithm Recommended by Online Education for Big Data
title_short Research on Algorithm Recommended by Online Education for Big Data
title_full Research on Algorithm Recommended by Online Education for Big Data
title_fullStr Research on Algorithm Recommended by Online Education for Big Data
title_full_unstemmed Research on Algorithm Recommended by Online Education for Big Data
title_sort research on algorithm recommended by online education for big data
publisher EDP Sciences
series SHS Web of Conferences
issn 2261-2424
publishDate 2015-01-01
description “Big data” is becoming a hot topic in the Internet. The long tail problem of the massive online courses also becomes the biggest headache for operation team of online education. The manner in which the reader wants most courses show to be presented before the user is the key to improve the quality of online edu-cation. Personalized recommendation system is to discover the readers interests tendency based on the existing user data, project data, and interactive data, thus to provide personalized product recommendation for readers. This article is based on the two kinds of algorithms, namely the content and the collaborative filtering recommendation to propose an improved integration scheme, which can make good use of existing data to discover the useful knowledge for readers’ recommendation. The method firstly solves the sparsity problem in traditional collaborative filtering, and meanwhile we start from the global structure relation of course, to analyze the relationship between the reader and the course more comprehensively. The algorithm to improve the accuracy of recommendation from multiple angles, and provides a feasible method for precise recommendation of online educational video.
topic recommendation algorithm
user interaction
online education
collaborative filtering recommendation
content recommendation
url http://dx.doi.org/10.1051/shsconf/20151401002
work_keys_str_mv AT fengtao researchonalgorithmrecommendedbyonlineeducationforbigdata
AT chengyun researchonalgorithmrecommendedbyonlineeducationforbigdata
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