The Study of Applying Data Mining to Categorize Books

碩士 === 華梵大學 === 資訊管理學系碩士班 === 94 ===   Book categorization has been a man-made work in library for decades. Since the data mining technology has been advanced and applied to many domains widely, the library researchers also began to leverage this method in offering readers better services, analyzing...

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Main Authors: Ke-Jiang Li, 李克強
Other Authors: Huei-Chung Chu
Format: Others
Language:zh-TW
Published: 2006
Online Access:http://ndltd.ncl.edu.tw/handle/14618755203218472675
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spelling ndltd-TW-094HCHT03960302016-06-01T04:21:10Z http://ndltd.ncl.edu.tw/handle/14618755203218472675 The Study of Applying Data Mining to Categorize Books 運用資料探勘技術從事圖書分類之研究 Ke-Jiang Li 李克強 碩士 華梵大學 資訊管理學系碩士班 94   Book categorization has been a man-made work in library for decades. Since the data mining technology has been advanced and applied to many domains widely, the library researchers also began to leverage this method in offering readers better services, analyzing the reader’s behavior, and cataloguing the books. However, this issue didn’t acquire much attention to study and drill down. In this paper, we applied the data mining technology to book categorization, expect to improve the procedures of book categorization, and reduce the work load of librarian as well.   This research started from the survey of operational mode in book classifier system, and then create a two-phase analysis model. In the first phase, the Apriori algorithm was applied to count the probability and gain the class with the higher probability, then use the Naïve Bayes classification algorithm to derive the most probability class in the group. Finally, the model was verified by the library of Huafan University, result show that from the assistant viewpoint, the technology of data mining can help the librarian to reduce their working load. Huei-Chung Chu 朱惠中 2006 學位論文 ; thesis 86 zh-TW
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description 碩士 === 華梵大學 === 資訊管理學系碩士班 === 94 ===   Book categorization has been a man-made work in library for decades. Since the data mining technology has been advanced and applied to many domains widely, the library researchers also began to leverage this method in offering readers better services, analyzing the reader’s behavior, and cataloguing the books. However, this issue didn’t acquire much attention to study and drill down. In this paper, we applied the data mining technology to book categorization, expect to improve the procedures of book categorization, and reduce the work load of librarian as well.   This research started from the survey of operational mode in book classifier system, and then create a two-phase analysis model. In the first phase, the Apriori algorithm was applied to count the probability and gain the class with the higher probability, then use the Naïve Bayes classification algorithm to derive the most probability class in the group. Finally, the model was verified by the library of Huafan University, result show that from the assistant viewpoint, the technology of data mining can help the librarian to reduce their working load.
author2 Huei-Chung Chu
author_facet Huei-Chung Chu
Ke-Jiang Li
李克強
author Ke-Jiang Li
李克強
spellingShingle Ke-Jiang Li
李克強
The Study of Applying Data Mining to Categorize Books
author_sort Ke-Jiang Li
title The Study of Applying Data Mining to Categorize Books
title_short The Study of Applying Data Mining to Categorize Books
title_full The Study of Applying Data Mining to Categorize Books
title_fullStr The Study of Applying Data Mining to Categorize Books
title_full_unstemmed The Study of Applying Data Mining to Categorize Books
title_sort study of applying data mining to categorize books
publishDate 2006
url http://ndltd.ncl.edu.tw/handle/14618755203218472675
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