A Trust Aware Product Recommending Scheme for Multiple Cloud using HADOOP Services
Keywords:
T-broker, cloud, keyword search, content based search, ranking using hadoopAbstract
Service recommender systems have been shown as irreplaceable tools for yielding worthy recommendations to client. In the recent years, the range of client, services and online information exchange has grown rapidly, producing the big data analysis issue for service recommender systems. Accordingly, the conventional recommender systems frequently suffer from scalability and problems related to efficieny most of existing recommender systems presents the same grades and rankings to various users without considering multiple users' preferences, which fails to meet users' individualize requirements. In this work, to mention the above challenges and presenting a personalized recommendation list for products and recommending the most relevant products to the users effectively. Particularly, keywords are used to point out users' preferences, and hadoop framework is used for storing and processing the data of the client and will generate appropriate recommendations.
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