Publication Type : Journal Article
Publisher : Communications in Computer and Information Science
Source : Communications in Computer and Information Science, Springer Verlag, Volume 968, p.309-321 (2019)
ISBN : 9789811357572
Keywords : Analytical models, Content-based, Contextual information, Feature reduction, High quality service, Maximum accuracies, Quality of service, Recommendation, Service compositions, Signal processing, Singular value decomposition, Web service description, Web services, Websites
Campus : Amritapuri
School : School of Engineering
Department : Computer Science
Year : 2019
Abstract : There are various inbound web services which prescribe services to clients. Specialists are more engaged in making framework for proposal of web service (WS) which limit the intricacy of selection process and improve the quality of service (QOS) suggestion. Our work implements a framework which recommends web services using an analytical model based on the contextual information provided by the service providers. This system helps users obtain high quality service automatically. Adaptive work performs feature reduction, similarity and ranking of WS. The important feature reduction process helps identify attribute values with maximum accuracy which results in proper evaluation of data. Efficient selection of WS for service composition requires better methods which properly calculate the similar values. A similarity helps to identify the closest services as per the requirement in the process of service composition. Ultimately, the system automatically selects the set of web services with highest similarity scores from the optimized set of web service description. © 2019, Springer Nature Singapore Pte Ltd.
Cite this Research Publication : S. Subbulakshmi, Ramar, K., Omanakuttan, A., and Sasidharan, A., “Automated analytical model for content based selection of web services”, Communications in Computer and Information Science, vol. 968, pp. 309-321, 2019