Investigating factors affecting library visits by university students using data mining
Background. Providing appropriate library services to students is a challenging task for university librarians. The library at Loei Rajabhat University has some concerns about its small number of visitors. The question of “what is known about the situation?” was raised. As an attempt to answer this...
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sg-ntu-dr.10356-1543482021-12-22T20:10:53Z Investigating factors affecting library visits by university students using data mining Puarungroj, Wichai Pongpatrakant, Pathapong Boonsirisumpun, Narong Phromkhot, Suchada Library and information science Background. Providing appropriate library services to students is a challenging task for university librarians. The library at Loei Rajabhat University has some concerns about its small number of visitors. The question of “what is known about the situation?” was raised. As an attempt to answer this question, data mining was employed to gain insights into library and student data. Objective. This study used two data mining algorithms—Naïve Bayes and C4.5 decision tree induction—to analyze the data. The results of the data mining were intended to be used in promoting undergraduate students to physically visit the library. Method. Data include students’ library gate entry collected from the library database and student data collected from the university registrar’s office. Results. The data mining yielded interesting results. Senior students were found to use the library less than younger students. There were two faculties whose students come to the library less than 50%. Current GPA was found to be an influential attribute for predicting library visit. Contributions. The research identified useful student attributes for predicting library visit. The results of the data mining can be used to increase the rate of library use by organizing activities that target those attributes. For example, the library can collaborate with the instructors to organize programs for students with low GPA. Published version 2021-12-17T08:05:56Z 2021-12-17T08:05:56Z 2018 Journal Article Puarungroj, W., Pongpatrakant, P., Boonsirisumpun, N. & Phromkhot, S. (2018). Investigating factors affecting library visits by university students using data mining. Library and Information Science Research E-Journal, 28(1), 25-33. https://dx.doi.org/10.32655/LIBRES.2018.1.3 1058-6768 https://hdl.handle.net/10356/154348 10.32655/LIBRES.2018.1.3 1 28 25 33 en Library and Information Science Research E-Journal © 2019 Wichai Puarungroj, Pathapong Pongpatrakant, Narong Boonsirisumpun, Suchada Phromkhot. All rights reserved. application/pdf |
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Library and information science Puarungroj, Wichai Pongpatrakant, Pathapong Boonsirisumpun, Narong Phromkhot, Suchada Investigating factors affecting library visits by university students using data mining |
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Background. Providing appropriate library services to students is a challenging task for university librarians. The library at Loei Rajabhat University has some concerns about its small number of visitors. The question of “what is known about the situation?” was raised. As an attempt to answer this question, data mining was employed to gain insights into library and student data. Objective. This study used two data mining algorithms—Naïve Bayes and C4.5 decision tree induction—to analyze the data. The results of the data mining were intended to be used in promoting undergraduate students to physically visit the library. Method. Data include students’ library gate entry collected from the library database and student data collected from the university registrar’s office. Results. The data mining yielded interesting results. Senior students were found to use the library less than younger students. There were two faculties whose students come to the library less than 50%. Current GPA was found to be an influential attribute for predicting library visit. Contributions. The research identified useful student attributes for predicting library visit. The results of the data mining can be used to increase the rate of library use by organizing activities that target those attributes. For example, the library can collaborate with the instructors to organize programs for students with low GPA. |
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Puarungroj, Wichai Pongpatrakant, Pathapong Boonsirisumpun, Narong Phromkhot, Suchada |
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Puarungroj, Wichai Pongpatrakant, Pathapong Boonsirisumpun, Narong Phromkhot, Suchada |
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Puarungroj, Wichai |
title |
Investigating factors affecting library visits by university students using data mining |
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Investigating factors affecting library visits by university students using data mining |
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Investigating factors affecting library visits by university students using data mining |
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Investigating factors affecting library visits by university students using data mining |
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Investigating factors affecting library visits by university students using data mining |
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investigating factors affecting library visits by university students using data mining |
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2021 |
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https://hdl.handle.net/10356/154348 |
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