DECISION MAKING AND OPTIMIZATION IN RECENT ICT APPLICATIONS

Authors

Shahreen Kasim
Mohd Farhan Md. Fudzee
Nureize Arbaiy
Hairulnizam Mahdin

Synopsis

This volume is devoted to the recent developments and applications of the Decision Making tools in the fields of ICT. It seeks to illustrate recent methods, procedures, and applications designed to solve  problems related to recent Information Communication and Technology applications formulated  through a mathematical programming framework e.g., stochastic, possibilistic, linear, non-linear, fuzzy, rough set, soft set, evolutionary. The aim of this volume is to enable researchers and practitioners to introduce recent theoretical, methodological, and empirical developments of decision making that includes selection, multiple criteria/attributes/objectives analysis in recent Information Communication and Technology applications. This book contains five interrelated chapters that emphasize soft computing techniques and methods. These chapters have been aligned in such a manner to give the readers a specific, continuity, yet practical understanding of recent works on decision making and optimization in recent applications.

Downloads

Download data is not yet available.

References

Aha, D. W., Kibler, D. and Albert, M. K. (1991). Instance-based Learning Algorithms. Machine Learning. 6: 37-66.

Alpaydin, E. (2004). Introduction to machine learning. London: The MIT Press.

Amin, A. and Mari, J. (1989). Machine recognition and correction of printed Arabic text. IEEE Transactions on Systems, Man and Cybernetics. 19: 1300-1306.

Anderson, T. L. (1994). Automatic screening of conventional papanicolaou smears. G. L. Wied, P. H. Bartels, D. L.

Rosenthal, and U. Shenck, (Eds). In Compendium on the computerized cytology and histology laboratory. 306-311. Illinois, Chicago: Tutorials of Cytology.

Ani, T. A. and Hamam, Y. (2003). A Hidden Markov Model-based Scilab Diagnosis Toolbox. Simulation News Europe (SNE). 38/39.

Baker, J. K. (1975). The Dragon System - an overview. IEEE Trans. ASSP. 23: 24-29.

Bamford, P. C. (1999). Segmentation of cell images with application to Cervical Cancer Screening. Brisbane: The University of Queensland, Australia.

Bar-Hillel, Y. (1960). A demonstration of the nonfeasibility of fully automatic high quality translation. Advances in Computers. New York: Academic Press. 158-163.

Barakat, N. H. (2007). Rule-extraction from Support Vector Machines: Medical Diagnosis, prediction and explanation. Brisbane: The University of Queensland, Australia.

Baum, L. E., Petrie, T., Soules, G. and Weiss, N. (1970). A maximisation technique occurring in the statistical analysis of probabilistic functions of Markov chains. Annals of Mathematical Statistics. 41: 164-171.

Bayes, T. (1763). An essay towards solving a problem in the doctrine of chances. Philosophical Transactions of the Royal Society (London). 53: 370-418.

Bellman, R. E. (1961). Adaptive control processes. Princeton: University Press.

Bengio, Y., Cun, Y. L., Nohl, C. and Burges, C. (1995). LeRec: A NN/HMM hybrid for on-line handwriting recognition. Neural Computation. 7: 1289-1303.

Bengtsson, E. (2003). Computerized cell image analysis: past, present, and future. Proceeding of the 13th Scandinavian Conference on Image Analysis (SCIA), Gothenberg, Sweden. 395-407.

Bradley, A. P. (1996). Machine learning for medical diagnostics: Techniques for feature extraction, classification, and evaluation. Brisbane: The University of Queensland, Australia.

Bunke, H., Wang, P. S. P. and Baird, H. S. (1997). Handbook of character recognition and document image analysis. Singapore: World Scientific.

Cecic, I. K., Li, G. and MacAulay, C. (2012). Technologies supporting analytical cytology: clinical, research and drug discovery applications. Journal of Biophotonics. 5: 313-326.

Chapelle, O., Scholkopf, B. and Zien, A. (2006). Semi-supervised learning. London: The MIT Press.

Chen, M. (1992). Off-line handwritten word recognition using Hidden Markov Models. Proc. U.S. Postal Service Adv. Techno. Conf., Washington, DC. 563-579.

Chen, M. Y., Kundu, A. and Srihari, S. N. (1995). Variable duration hidden markov model and morphological segmentation for handwritten word recognition. IEEE Transactions on Image Processing. 4: 1675-1688.

Cover T. M. and Hart, P. E. (1967). Nearest neighbor pattern classification. IEEE Trans. IT-13: 21-27.

Dasarathy, B. V. (1991). Nearest neighbor norms: NN pattern classification techniques.

Published

1 January 2016

Details about the available publication format: PDF

PDF

ISBN-13 (15)

978-967-0764-67-2

How to Cite

Shahreen Kasim, Mohd Farhan Md. Fudzee, Nureize Arbaiy, & Hairulnizam Mahdin. (2016). DECISION MAKING AND OPTIMIZATION IN RECENT ICT APPLICATIONS. Penerbit UTHM. https://publisher.uthm.edu.my/omp/index.php/penerbituthm/catalog/book/188