Download Advances in Data Mining and Modeling: Hong Kong 27 - 28 June by Wai-Ki Ching, Michael Kwok-Po Ng PDF

By Wai-Ki Ching, Michael Kwok-Po Ng

ISBN-10: 9812383549

ISBN-13: 9789812383549

Facts mining and information modelling are below quick improvement. due to their vast purposes and examine contents, many practitioners and lecturers are drawn to paintings in those parts. with the intention to selling communique and collaboration one of the practitioners and researchers in Hong Kong, a workshop on facts mining and modelling was once held in June 2002. Prof Ngaiming Mok, Director of the Institute of Mathematical examine, The college of Hong Kong, and Prof Tze Leung Lai (Stanford University), C.V. Starr Professor of the collage of Hong Kong, initiated the workshop. This paintings includes chosen papers provided on the workshop. The papers fall into major different types: information mining and knowledge modelling. info mining papers take care of trend discovery, clustering algorithms, type and functional functions within the inventory industry. facts modelling papers deal with neural community versions, time sequence types, statistical types and sensible functions.

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And Shawe-Taylor J. An Introduction to support vector machines and other kernel-based learning methods. Cambridge University Press, 2000. , and Vapnik,V. Gene Selection for Cancer Classification using Support Vector Machines. Machine Learning 46, 389422,2002. , Li Y. and Tipping M. An Efficient Feature Selection Algorithms for Classification of Gene Expression Data. NIPS 2001 Workshop on: Machine Learning Techniques for Bioinformatics, British Columbia, Canada, 2001. , Scholkopf B. R. Fisher discriminant analysis with kernels.

V. Pliner, Metric Unidirnensional Scaling and Global Optimization, Journal of Classification, 13,3-18 (1996). 7. S. Robinson, A Method for Chronologically Ordering Archaeological Deposits, American Antiquity, 16,293-301 (1951). hk Mining textual document and time series concurrently, such as predicting the movements of stock prices based on news articles, is definitely an emerging topic in data mining society nowadays. Previous research has already suggested that relationships between news articles and stock prices do exist.

G. Pattern Classification (2nd Edition), Wiley-Interscience, October 2000 12. Kohai R. and John G. H. Wrappers for feature subset selection. 273-324, 1997. 13. , and Street W. Feature selection via mathematical programming, INFORMS Journal on computing, 1998. 14. Bradley P. and Mangasarian 0. Feature selection via concave minimization and support vector machines, Proc. 82-90, San Francisco, CA, 1998. 15. Burges C. J. C. A tutorial on support vector machines for pattern recognition. Data Mining and Knowledge Discovery 2(2), 121-167, 1998.

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