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RESEARCH PRODUCT
A Learning Automata Based Solution to Service Selection in Stochastic Environments
B. John OommenAnis YazidiOle-christopher Granmosubject
Scheme (programming language)Computational complexity theoryComputer sciencemedia_common.quotation_subject0102 computer and information sciences02 engineering and technologyMachine learningcomputer.software_genreComputer security01 natural sciences0202 electrical engineering electronic engineering information engineeringQuality (business)Simplicitymedia_commoncomputer.programming_languageService qualityLearning automatabusiness.industryVDP::Technology: 500::Information and communication technology: 550VDP::Mathematics and natural science: 400::Information and communication science: 420::Knowledge based systems: 425010201 computation theory & mathematics020201 artificial intelligence & image processingStochastic optimizationArtificial intelligencebusinesscomputerReputationdescription
Published version of a paper published in the book: Trends in Applied Intelligent Systems. Also available on SpringerLink: http://dx.doi.org/10.1007/978-3-642-13033-5_22 With the abundance of services available in today’s world, identifying those of high quality is becoming increasingly difficult. Reputation systems can offer generic recommendations by aggregating user provided opinions about service quality, however, are prone to ballot stuffing and badmouthing . In general, unfair ratings may degrade the trustworthiness of reputation systems, and changes in service quality over time render previous ratings unreliable. In this paper, we provide a novel solution to the above problems based on Learning Automata (LA), which can learn the optimal action when operating in unknown stochastic environments. Furthermore, they combine rapid and accurate convergence with low computational complexity. In additional to its computational simplicity, unlike most reported approaches, our scheme does not require prior knowledge of the degree of any of the above mentioned problems with reputation systems. Instead, it gradually learns which users provide fair ratings, and which users provide unfair ratings, even when users unintentionally make mistakes. Comprehensive empirical results show that our LA based scheme efficiently handles any degree of unfair ratings (as long as ratings are binary). Furthermore, if the quality of services and/or the trustworthiness of users change, our scheme is able to robustly track such changes over time. Finally, the scheme is ideal for decentralized processing. Accordingly, we believe that our LA based scheme forms a promising basis for improving the performance of reputation systems in general.
year | journal | country | edition | language |
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2010-01-01 |