Abstract
As the Web and its usage develop very fast, the content, structure, and usage data, and the Web mining get more and more useful in everywhere such as e-supermarkets, e-commerce, e-learning, and e-government. Many theories and algorithms are reported for Web mining. This paper shows a novel method for the Web data extracting of shop online. The MVC design model and the Bottle Formwork are opted to build the application system. The opened developing tools: Python language and MySQL database are used to code the system program and construct the system database respectively. The system architecture and the commodity classified are introduced. More then 30 functions coded by Python are designed for implantation the data extracting, analyzing, statistics, and system management. Some of them are described in detail. Experiment demonstrates its performance and proves this case is meaningful and useful for other shop online development.
Access this chapter
Tax calculation will be finalised at checkout
Purchases are for personal use only
Preview
Unable to display preview. Download preview PDF.
References
Chen, Q., Hou, M.: XML-based data mining design and implementation. In: ICCDA 2010, pp. V4-610–V4-613 (2010)
Lim, E.H.Y., Tam, H.W.K., Wong, S.W.K., et al.: Collaborative content and user-based web ontology learning system. In: FUZZ-IEEE 2009, pp. 1050–1055 (2009)
Chanchary, F.H., Haque, I., Khalid, S.: Web Usage Mining to Evaluate the Transfer of Learning in a Web-Based Learning Environment. In: WKDD 2008, pp. 249–253 (2008)
Alla, H.A.H.M.A., Al-Ghreimil, N.: A Novel Efficient Classification Algorithm for Search Engines. In: CIMCA 2008, pp. 773–778 (2008)
Chan, G.Y., Wong, H.S., Rao, G.S.V.R.K.: An Adaptive Intrusion Detection and Prevention (ID/IP) Framework for Web Services. In: ICCIT 2007, pp. 528–534 (2007)
Atanasova, T., Kasheva, M., Sulova, S., Vasilev, J.: Analysis of the possible application of Data Mining, Text Mining and Web Mining in Business Intelligent Systems. In: MIPRO 2010, pp. 1294–1297 (2010)
Li, Y., Feiqiong, L., Kizza, J.M., Ege, R.K.: Discovering topics from dark websites. In: CICS 2009, pp. 175–179 (2009)
Ramakrishna, M.T., Gowdar, L.K., Havanur, M.S., Swamy, B.P.M.: Web Mining: Key Accomplishments, Applications and Future Directions. In: DSDE 2010, pp. 187–191 (2010)
Cheng, Z., Yong, F., Yaping, S.: The Implementation of the Web Mining Based on XML Technology. In: CIS 2009, pp. 84–87 (2009)
Xu, C.-Z., Ibrahim, T.I.: A keyword-based semantic prefetching approach in Internet news services. IEEE Transactions on Knowledge and Data Engineering 16(5), 601–611 (2004)
Grobelnik, M., Mladenic, D., Fortuna, B.: Semantic Technology for Capturing Communication Inside an Organization. IEEE Internet Computing 13(4), 59–67 (2009)
Su, J.-H., Yeh, H.-H., Yu, P.S., Tseng, V.S.: Music Recommendation Using Content and Context Information Mining. IEEE Intelligent Systems 25(1), 16–26 (2010)
Litecky, C., Aken, A., Ahmad, A., Nelson, H.J.: Mining for Computing Jobs. IEEE Software 27(1), 78–85 (2010)
Chen, H.: IEDs in the dark web: Lexicon expansion and genre classification. In: ISI 2009, pp. 173–175 (2009)
Dubois, P.F., Yang, T.: Extending Python with Fortran. Computing in Science & Engineering 1(5), 66, 68–73 (1999)
Dulume, P.F.A.: Nest of Pythons. Comouting in Science & Engineering 7(6), 81–84 (2005)
Ramakrishna, M.T., Gowdar, L.K., Havanur, M.S., Swamy, B.P.M.: Web Mining: Key Accomplishments, Applications and Future Directions. In: DSDE 2010, pp. 187–191 (2010)
Author information
Authors and Affiliations
Editor information
Editors and Affiliations
Rights and permissions
Copyright information
© 2011 Springer-Verlag Berlin Heidelberg
About this paper
Cite this paper
Deng, J., Cao, F., Zhu, Q., Zhang, Y. (2011). The Web Data Extracting and Application for Shop Online Based on Commodities Classified. In: Wu, Y. (eds) Computing and Intelligent Systems. ICCIC 2011. Communications in Computer and Information Science, vol 234. Springer, Berlin, Heidelberg. https://doi.org/10.1007/978-3-642-24091-1_26
Download citation
DOI: https://doi.org/10.1007/978-3-642-24091-1_26
Publisher Name: Springer, Berlin, Heidelberg
Print ISBN: 978-3-642-24090-4
Online ISBN: 978-3-642-24091-1
eBook Packages: Computer ScienceComputer Science (R0)