SOCIAL GROUP RECOMMENDATION SYSTEM BASED ON BIG DATA
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Abstract
In recent years, the use of internet and functional activities have created development to evolve the system and application of Cyber-PhysicalSocial Systems (CPSSs).Cyber-Physical-Social Systems (CPSSs) became the essential criteria of evolution within the data business, through that ancient technology can evolve into cyber-physical-social process science. Existing work is recommended person for example Facebook. This project, proposes a web based application on multidimensional system that the group-centric recommender system within the CPSCP domain with activity-oriented cluster discovery, the revision of rating information for improved accuracy, and cluster preference modelling that supports decent context mining from multiple sources. To boot we have a tendency to inserting additional four-dimensional cluster preference, modelling like profile primarily based, content primarily based. In profile based profile is going to be refer and content in content based. The goal of all over system is to study and development with specific techniques and methods for obtaining user references from several interactions with the group member objective to make the system. The - recommender system is economical, objective and correct.
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