Hiindex LOGO

Research Article

Fuzzy Max-min Composition In Quality Specifications Of Multi-agent System


Author(s): T.Pathinathan , J. Jon Arockiaraj,M.Poonthentral
Affiliation: Department of Mathematics, Loyola College, Chennai
Year of Publication: 2014
Source: International Journal of Computing Algorithm
     
×

Scholarly Article Identity Link


HTML:


File:


Citation: T.Pathinathan, J. Jon Arockiaraj,M.Poonthentral. "Fuzzy Max-min Composition In Quality Specifications Of Multi-agent System." International Journal of Computing Algorithm 3.2 (2014): 101-106.

Abstract:
In this paper a new technique named Fuzzy Max- Min Composition is used to obtain prioritization of quality specifications that assist quality engineer in achieving the desired level of quality for Multi-agent systems. Intuitionistic fuzzy Set has been used to capture the uncertainties associated with stakeholder’s recommendation.


Keywords FuzzySet; Intuitionistic fuzzy Set IFS, Intuitionistic Fuzzy Relation IFR Multi-agent system MAS, Quality Criteria, Quality factor.


  • BibTex
  • Reference
  • XML
  • JSON
  • Dublin Core
  • CSL

@article{Fuz1481711, author = {T.Pathinathan,J. Jon Arockiaraj,M.Poonthentral}, title = {Fuzzy Max-min Composition In Quality Specifications Of Multi-agent System}, journal={International Journal of Computing Algorithm}, volume={3}, issue={2}, issn = {2278-2397}, year = {2014}, publisher = {Scholarly Citation Index Analytics-SCIA}

  • [1] B.H. Far, R.S. Wahono, Cognitive-Decision Making Issues for Soft-ware Agents, Kluwer Academic Publishers, Brain and Mind 4 2003 239-252.
  • [2] B.H., Far, Software Agents: Quality, Complexity and Uncertainty Is-sues, Proceedings of the First IEEE international Conference on Cogni-tive Informatics ICCI02, Canada, 2002.
  • [3] P.A.Buhler, M. N.Huhns, Trust and Persistence, IEEE Internet Compu-ting 5 2 2001 90-92
  • [4] J.F.Peters, W. Pedrycz, Software Engineering: An Engineering Ap-proach, 2000, John Wiley and Sons, ch. 7.
  • [5] L C Lee, H S Nwana, D T Ndumu, The stability, scalability and per-formance of multi-agent systems, BT Technol J 163 1998 94-103.
  • [6] L. Bunch, M. Breedy, J. M. Bradshaw, M. Carvalho, N. Suri, A. Uszok, J. Hansen, M. Pechoucek, V. Marik, Agents, interactions, mobility, and systems AIMS: Software agents for process monitoring and notifica-tion, March 2004, In Proceedings of the 2volu004 ACM symposium on Applied computing, Nicosia, Cyprus, 2004, pp.94-100.
  • [7] B. Luiqi, W. W. Wictor, Establishing Quality Control in Software Agents, ACM SIGAPP Applied Computing Review 932001 31 – 33.
  • [8] M. Guiagoussou , S. Said, Implementation of a diagnostic and trouble-shooting Multi-agent system for cellular networks, International Journal of Network Management 9 4 1999 221-237.
  • [9] M. S. Erden, K. Leblebicioğlu, U. Halici, Multi-Agent System-Based Fuzzy Controller Design with Genetic Tuning for a Mobile Manipulator Robot in the Hand Over Task, Journal of Intelligent and Robotic Sys-tems 393 2004 287-306.
  • [10] P.Bedi, V.Gaur, Multidimensional Quality Model of MAS, Proceedings of Conference on Software Engineering Research &Practice, Las Ve-gas, Nevada, USA, 2006, pp. 130-136.
  • [11] R. Singh, A Systematic approach to Software Safety, A systematic approach to software safety, Software Engineering Conference, Taka-matsu, Japan, 1999, pp. 420-423.
  • [12] K. Atanassov, Intuitionistic Fuzzy Sets: Theory and Applications, 35, Studies in Fuzziness and Soft Computing, Physica- Verlag Heidelberg, New York, 1999, Ch. 2.
  • <?xml version='1.0' encoding='UTF-8'?> <record> <language>eng</language> <journalTitle>International Journal of Computing Algorithm</journalTitle> <eissn>2278-2397 </eissn> <publicationDate>2014</publicationDate> <volume>3</volume> <issue>2</issue> <startPage>101</startPage> <endPage>106</endPage> <documentType>article</documentType> <title language='eng'>Fuzzy Max-min Composition In Quality Specifications Of Multi-agent System</title> <authors> <author> <name>T.Pathinathan</name> </author> </authors> <abstract language='eng'>In this paper a new technique named Fuzzy Max- Min Composition is used to obtain prioritization of quality specifications that assist quality engineer in achieving the desired level of quality for Multi-agent systems. Intuitionistic fuzzy Set has been used to capture the uncertainties associated with stakeholder’s recommendation.</abstract> <fullTextUrl format='pdf'>http://www.hindex.org/2014/p817.pdf</fullTextUrl> <keywords language='eng'> <keyword>FuzzySet; Intuitionistic fuzzy Set IFS, Intuitionistic Fuzzy Relation IFR Multi-agent system MAS, Quality Criteria, Quality factor.</keyword> </keywords> </record>

    { "@context":"http://schema.org", "@type":"publication-article","identifier":"http://www.hindex.org/2014/article.php?page=817", "name":"Fuzzy Max-min Composition In Quality Specifications Of Multi-agent System", "author":[{"name":"T.Pathinathan "}], "datePublished":"2014", "description":"In this paper a new technique named Fuzzy Max- Min Composition is used to obtain prioritization of quality specifications that assist quality engineer in achieving the desired level of quality for Multi-agent systems. Intuitionistic fuzzy Set has been used to capture the uncertainties associated with stakeholder’s recommendation.", "keywords":["FuzzySet; Intuitionistic fuzzy Set IFS, Intuitionistic Fuzzy Relation IFR Multi-agent system MAS, Quality Criteria, Quality factor."], "schemaVersion":"https://schema.org/version/3.3", "includedInDataCatalog":{ "@type":"DataCatalog", "name":"Scholarly Citation Index Analytics-SCIA", "url":"http://hindex.org"}, "publisher":{"@type":"Organization", "name":"Scientific Communications Research Academy" } }

    <?xml version='1.0' encoding='utf-8'?> <oai_dc:dc xmlns:dc="http://purl.org/dc/elements/1.1/" xmlns:oai_dc="http://www.openarchives.org/OAI/2.0/oai_dc/" xmlns:xsi="http://www.w3.org/2001/XMLSchema-instance" xsi:schemaLocation="http://www.openarchives.org/OAI/2.0/oai_dc/ http://www.openarchives.org/OAI/2.0/oai_dc.xsd"> <dc:contributor>J. Jon Arockiaraj</dc:contributor> <dc:contributor>M.Poonthentral</dc:contributor> <dc:contributor></dc:contributor> <dc:creator>T.Pathinathan</dc:creator> <dc:date>2014</dc:date> <dc:description>In this paper a new technique named Fuzzy Max- Min Composition is used to obtain prioritization of quality specifications that assist quality engineer in achieving the desired level of quality for Multi-agent systems. Intuitionistic fuzzy Set has been used to capture the uncertainties associated with stakeholder’s recommendation.</dc:description> <dc:identifier>2014SCIA316F0817</dc:identifier> <dc:language>eng</dc:language> <dc:title>Fuzzy Max-min Composition In Quality Specifications Of Multi-agent System</dc:title> <dc:type>publication-article</dc:type> </oai_dc:dc>

    { "identifier": "2014SCIA316F0817", "abstract": "In this paper a new technique named Fuzzy Max- Min Composition is used to obtain prioritization of quality specifications that assist quality engineer in achieving the desired level of quality for Multi-agent systems. Intuitionistic fuzzy Set has been used to capture the uncertainties associated with stakeholder’s recommendation.", "author": [ { "family": "T.Pathinathan,J. Jon Arockiaraj,M.Poonthentral" } ], "id": "817", "issued": { "date-parts": [ [ 2014 ] ] }, "language": "eng", "publisher": "Scholarly Citation Index Analytics-SCIA", "title": " Fuzzy Max-min Composition In Quality Specifications Of Multi-agent System", "type": "publication-article", "version": "3" }