Automated Dewey Decimals Multiple Relation Classification System
Abstract
This research were presented Automated Dewey Decimals Multiple Relation Classification System consisted of the Information Extraction, the Keyword Analysis, the evaluation of Keyword Weight, the categorization are accordance with the DDC-MR Rules. The first stage is the automatic classification for specific category we compared the classified category with information from OhioLINK. The efficiency of our prototype are measure Accuracy, Precision, Recall and F-Measure. The second innovation is the automatic DDC-MR classification, showing the category pertaining to the book content and was also analyze article title in Wikipedia, which allow to link to the content in the library.
This research of experiment results could separate into 2 groups : (1) Only use DDC-MR Rule the efficiency are Accuracy 88 %, Precision 90%, Recall 96 % and F-Measure 93 % and (2) use Neural networks on efficiency are Accuracy 73 %, Precision 78%, Recall 73 % and F-Measure 71 %. The other results from this work is the analysis of information could be compare values books in the library to classified as the same groups of information.
Full Text:
PDFReferences
. Barbara Daniel. Carlotta, D., Kang, N. “Mining relevant text from unlabelled documents.” Proceedings of the Third IEEE International Conference on Data Mining (ICDM’03), 2003.
. ohioLINK – The Ohio Library and Information Network [Online] Available From: http://www.ohiolink.edu/
. Huang Chong and et al. “Towards multi-granularity multi-facet E-book eval.” ACM 978-1-59593-654-7/07/0005, 2007.
. Kampeerapaappat Poorivat and Mingkhwan Anirach. “Method for Website Categorize Using Scale Dewey Decimals Classification Scheme.”, in Proceedings of 4th National Conference on Computing and Information Technology, NCCIT2008, Bangkok, Thailand, May 23-24, 2008.
. Kampeerapaappat, P. and Mingkhwan, A., “A Propose Model for Web Classification with Dewey Decimals Classification.” Vol.2 No.1 AITETconf2nd (S&T Teaching in Vocational Education based on Sufficient Economy). Thailand: Rajamangala University of Technology Krungthep.2007.
. Kampeerapaappat, P. Namvong, N. Mingkhwan, A., “A study of dynamic content DDC-MR Classification : Case Study WIKIPEDIA.” The 11th Annual Conference on the Convergence of Telecommunications, Networking & Broadcasting (PGNet 2010), Liverpool, UK, 21-22 June 2010.
. Lertmahakiat Wilaiporn and Mingkwan Anirach. “A propose idea of search engine results page base on DDC classification.” Vol.2, No.1, Jan-Dec, 2007, AITET 2nd conference : S&T Teaching in Vocational Education based on Sufficient Economy. 2007.
. Lertmahakiat, W. Kampeerapaappat, P. Mingkhwan, A., ”A Survey of Search Engine Result Page.” The Journal of KMUTNB., Vol.18, No.1, Jan - Apr. 2008a.
. Lertmahakiat, W. Kampeerapaappat, P. Mingkhwan, A., “A DDC Multiple Relation Content Retrieval Framework. PGNet 2008.” the 9thAnnual Postgraduate Symposium on The Convergence of Telecommunications, Networking and Broadcasting, Liverpool John Moores University, UK. 23rd-24th June 2008b.
. Lertmahakiat, W., Mingkhwan, A.,” Estimation Representative Data of Book Contents for Processing with DDC-MR.” Proceedings NCCIT 2009. The 5th National Conference on Computing and Information Technology., King Mongkut’s Institute of Technology North Bangkok, Thailand, 22 – 23 May 2009.
. Li, Cong, Ji-Rong Wen and Hang Li. “Text Classification Using Stochastic Keyword Generation.” Proceedings of the 20th International Conference on Machine Learning (ICML-2003),2003.
. McCallum Andrew, Nigam Kamal. "Text Classification by Bootstrapping with Keywords, EM and Shrinkage." Improving Text Classification by Shrinkage in a Hierarchy of Classes, Andrew McCallum, Roni Rosenfeld, Tom Mitchell and Andrew Y. Ng in Proceedings of the Fifteenth International Conference on Machine Learning, 1998
. Prabowo, R. and et al. “Ontology-based automatic classification for the Web.”,182-191. Proceedings of the 3rd International conference on Web information systems engineering. 2002.
. Sankar K. Pal and Pabitra Mitra. “Pattern Recognition Algorithms for Data Mining : Scalability, Knowledge Discovery and Soft Granular Computing. London : A CRC Press Computer.” 2004.
. Sudhakar, Venkata and Banshi D. Chaudhary. 2006. “A Hierarchy of Engines based on ODP Concept.”, Proceeding of the 2006 IEEE/WIC/ACM International Conference on Web Intelligence. New York : ACM Press.
. Watthananon, J., Mingkhwan, A., “A connection relationship group of knowledge technique with DDC-Multiple Relations.”, Proceedings WUNCA 21st and CIT2010. National Conference on Computer Information Technologies 2010. , Burapa University, Thailand.2010.