Similarity Analysis of Learning Interests among Majors Using Complex Networks

At present, multi-specialization cross integration is the new trend for high-level personnel training and scientific and technological innovation. A similarity analysis of learning interests among specializations based on book borrowing behavior is proposed in this paper. Students of different major...

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Main Authors: Qiang Zhang, Xujuan Zhang, Linli Gong, Zhigang Li, Qingqing Zhang, Wanghu Chen
Format: Article
Language:English
Published: MDPI AG 2020-02-01
Series:Information
Subjects:
Online Access:https://www.mdpi.com/2078-2489/11/2/94
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spelling doaj-2cadf563009b416cb5a5f79ca12cd2b72020-11-25T02:03:24ZengMDPI AGInformation2078-24892020-02-011129410.3390/info11020094info11020094Similarity Analysis of Learning Interests among Majors Using Complex NetworksQiang Zhang0Xujuan Zhang1Linli Gong2Zhigang Li3Qingqing Zhang4Wanghu Chen5College of Computer Science & Engineering, Northwest Normal University, Lanzhou 730070, ChinaCollege of Computer Science & Engineering, Northwest Normal University, Lanzhou 730070, ChinaNorthwest Normal University Library, Lanzhou 730070, ChinaNorthwest Normal University Library, Lanzhou 730070, ChinaCollege of Computer Science & Engineering, Northwest Normal University, Lanzhou 730070, ChinaCollege of Computer Science & Engineering, Northwest Normal University, Lanzhou 730070, ChinaAt present, multi-specialization cross integration is the new trend for high-level personnel training and scientific and technological innovation. A similarity analysis of learning interests among specializations based on book borrowing behavior is proposed in this paper. Students of different majors that borrow the same book can be regarded as a way of measuring similar learning interests among majors. Considering the borrowing data of 75 majors, 14,600 undergraduates, and 280,000 books at the Northwest Normal University (NWNU), as an example, this study classified readers into majors depending on similarity among students. A complex network of similar learning interests among specializations was constructed using group behavior data. The characteristics of learning interests were revealed among majors through a network topology analysis, importance of network nodes, and calculation of the similarity among different majors by the Louvain algorithm. The study concluded that the major co-occurrence network was characterized as scale-free and small-world; most majors had mutual communication and an infiltrating relationship, and the 75 majors of NWNU may form six major interest groups. The conclusions of the study were related to the development of majors of the university, and a match between major learning communities was based on the borrowing interest in a similar network to reflect the relationship between the characteristics and internal operating rules of a major.https://www.mdpi.com/2078-2489/11/2/94similar relationshipbook borrowingcomplex networklearning interest among majors
collection DOAJ
language English
format Article
sources DOAJ
author Qiang Zhang
Xujuan Zhang
Linli Gong
Zhigang Li
Qingqing Zhang
Wanghu Chen
spellingShingle Qiang Zhang
Xujuan Zhang
Linli Gong
Zhigang Li
Qingqing Zhang
Wanghu Chen
Similarity Analysis of Learning Interests among Majors Using Complex Networks
Information
similar relationship
book borrowing
complex network
learning interest among majors
author_facet Qiang Zhang
Xujuan Zhang
Linli Gong
Zhigang Li
Qingqing Zhang
Wanghu Chen
author_sort Qiang Zhang
title Similarity Analysis of Learning Interests among Majors Using Complex Networks
title_short Similarity Analysis of Learning Interests among Majors Using Complex Networks
title_full Similarity Analysis of Learning Interests among Majors Using Complex Networks
title_fullStr Similarity Analysis of Learning Interests among Majors Using Complex Networks
title_full_unstemmed Similarity Analysis of Learning Interests among Majors Using Complex Networks
title_sort similarity analysis of learning interests among majors using complex networks
publisher MDPI AG
series Information
issn 2078-2489
publishDate 2020-02-01
description At present, multi-specialization cross integration is the new trend for high-level personnel training and scientific and technological innovation. A similarity analysis of learning interests among specializations based on book borrowing behavior is proposed in this paper. Students of different majors that borrow the same book can be regarded as a way of measuring similar learning interests among majors. Considering the borrowing data of 75 majors, 14,600 undergraduates, and 280,000 books at the Northwest Normal University (NWNU), as an example, this study classified readers into majors depending on similarity among students. A complex network of similar learning interests among specializations was constructed using group behavior data. The characteristics of learning interests were revealed among majors through a network topology analysis, importance of network nodes, and calculation of the similarity among different majors by the Louvain algorithm. The study concluded that the major co-occurrence network was characterized as scale-free and small-world; most majors had mutual communication and an infiltrating relationship, and the 75 majors of NWNU may form six major interest groups. The conclusions of the study were related to the development of majors of the university, and a match between major learning communities was based on the borrowing interest in a similar network to reflect the relationship between the characteristics and internal operating rules of a major.
topic similar relationship
book borrowing
complex network
learning interest among majors
url https://www.mdpi.com/2078-2489/11/2/94
work_keys_str_mv AT qiangzhang similarityanalysisoflearninginterestsamongmajorsusingcomplexnetworks
AT xujuanzhang similarityanalysisoflearninginterestsamongmajorsusingcomplexnetworks
AT linligong similarityanalysisoflearninginterestsamongmajorsusingcomplexnetworks
AT zhigangli similarityanalysisoflearninginterestsamongmajorsusingcomplexnetworks
AT qingqingzhang similarityanalysisoflearninginterestsamongmajorsusingcomplexnetworks
AT wanghuchen similarityanalysisoflearninginterestsamongmajorsusingcomplexnetworks
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