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Reseach Article

Robust Implementation of ALFIS for Prediction of Medical Information System

by M. Sindhu, S. Venkatesh, A. Mary Benita
International Journal of Computer Applications
Foundation of Computer Science (FCS), NY, USA
Volume 57 - Number 22
Year of Publication: 2012
Authors: M. Sindhu, S. Venkatesh, A. Mary Benita
10.5120/9418-3251

M. Sindhu, S. Venkatesh, A. Mary Benita . Robust Implementation of ALFIS for Prediction of Medical Information System. International Journal of Computer Applications. 57, 22 ( November 2012), 1-11. DOI=10.5120/9418-3251

@article{ 10.5120/9418-3251,
author = { M. Sindhu, S. Venkatesh, A. Mary Benita },
title = { Robust Implementation of ALFIS for Prediction of Medical Information System },
journal = { International Journal of Computer Applications },
issue_date = { November 2012 },
volume = { 57 },
number = { 22 },
month = { November },
year = { 2012 },
issn = { 0975-8887 },
pages = { 1-11 },
numpages = {9},
url = { https://ijcaonline.org/archives/volume57/number22/9418-3251/ },
doi = { 10.5120/9418-3251 },
publisher = {Foundation of Computer Science (FCS), NY, USA},
address = {New York, USA}
}
%0 Journal Article
%1 2024-02-06T21:01:16.406521+05:30
%A M. Sindhu
%A S. Venkatesh
%A A. Mary Benita
%T Robust Implementation of ALFIS for Prediction of Medical Information System
%J International Journal of Computer Applications
%@ 0975-8887
%V 57
%N 22
%P 1-11
%D 2012
%I Foundation of Computer Science (FCS), NY, USA
Abstract

The institute of medicine has long recognized Problems with health care quality and for more than a decade has advocated using health information technology to improve quality. The fuzzy cognitive map has gradually emerged as a concrete paradigm for knowledge representations, and simulation conditions are applicable, to numerous research and application field. However we have proposed efficient methods to determine clustering based investigated systems, for medical decision making. The manually developed models have a substantially shortcoming due to difficulties in assessing its reliability. In this paper we proposed a fuzzy logical network that enhances the learning ability of FCM. Our approach discusses the inference mechanisms of conventional FCM in the determination of membership functions. FCM models of investigations system can be automatically constructed from medical data using our approach. In the employed fuzzy logical networks the concept of mutual subset used to describe the casualties which provide more transparent interpretations in FCM. The effectiveness of the proposed approach in prediction of jaundice using clustering is demonstrated through numerical simulation.

References
  1. Babushka Fuzzy Modeling for Control K1uwer Aca. Pub London (1998).
  2. Bezdek C et al, FCM Fuzzy c-means clustering algorithm Computers and Geoscience, 1984, 10(2-3), l91-203.
  3. Hammouda M, Web Mining: Identifying Document Structure for Web Document Clustering Master's Thesis, Department of Systems Design Engg , Canada (2002).
  4. Kanjani Parallel Nonnegative Matrix Factorization for Document Clustering CPSC-659 spring (2007)
  5. Mendes ES et al, A Scalable Hierarchical Fuzz Clustering Algorithm for Text Mining, UK.
  6. Grira M et al, Unsupervised and semi-supervised clustering: a brief survey (2004)
  7. Guh et al Cure: an Efficient Clustering Algorithm for Large Databases Proceedings of the 1 998 ACM SIGMOD Int. Conf. On Mgt of data ACM Press,(1998) 73-84.
  8. Change HH Intelligent Agent's Technolog Characteristics Applied to Online Auctions Task A Combined Model of TTF and TAM Technovation 28 (9), 564-577, 2008.
  9. Kahramanli H et al Design of a Hybrid System for the Diabetes and Heart Diseases Expert Systems with Applications 35(1-2) 82-89, (2008).
  10. Grant P A new A approaches to Diabetic Control:Fuzzy Logic and Insulin pump Technology Medical Engineering & Physics 29(7)824-827, (2007).
  11. Hayashi K et al, Simulator for Studies of Fuzzy Control Methods Fuzzy Sets and Systems 93, 137-144(1998).
  12. Guillaume S, Designing Fuzzy Inference System From Data: An Interpretability Oriented Review, IEEE Transaction on Fuzzy Systems, 9(3), 426-443, (2001)
  13. Balasko B et al, Fuzzy clustering and data analysis toolbox for use with MATLAB(2010).
  14. Mamdami EH et al An Experirnalment in linguistic Synthesis with a Fuzzy Logic Controlle, Int. Jou. of Man-Machine Studies, 7(1)1-13(1975).
  15. Acampora G et al Using FML and Fuzzy Technology in Adaptive Ambient Intelligence Environments Int. Jou. Of Computational Intelligence Research, 1(2)171-182 (2005).
  16. Ross TS Fuzzy Logic with Engineering Applications, McGraw Hill Int. Ed (1997).
  17. Saade JJ A Unifying Approach to Defuzzification and Comparison of the outputs of Fuzzy Controllers IEEE Translation on Fuzzy Systems,4(3)227—237, (1996).
  18. Zadeh LA, Outline of a New Approach to the Analysis of the complex Systems and Decision Processes, IEEE Trans. Systems, Man and Cybernetics, 3(28-44), Jan 1973.
  19. Jang JSR et al,Neuro-fuzzy Modeling and Control, Proceedings of the IEEE, 83(3), 378-406(1995).
  20. Acampora G et al Fuzzy Control Interoperability and Scalability for Adaptive Domotic Framework, IEEE Transactions on Industrial Informatics1 (2)77-111,(2005).
  21. Czogala E et al, Fuzzy and Neuro-Fuzzy Intelligent Systems, Physica-Verlag,(2000).
  22. Lee CS et al, Ontology-based intelligent healthcare agent and its application to respiratory waveform recognition Expert Systems with Applications, 33(3),606-619(2007).
  23. Lee CS et al Automated Ontology construction for Instructed Text Document Data & knowledge Engineering 60(3) 547-566(2007).
Index Terms

Computer Science
Information Sciences

Keywords

FCM IFS IFCM Clustering Inference mechanism