Abstract

With the explosion of service based web application like online news, shopping, bidding, libraries great amount of information is available. Due to this information overload problem, to find right thing is a tedious task for the user. A recommender system can be used to suggest customized information according to preferences Collaborative filtering techniques play a vital role in designing the recommendation systems. The collaborative filtering technique based recommender system may suffer with cold start problem i.e. problem and item problem and scalability issues. Traditional K-Nearest Neighbor Technique also suffers with and item cold start problem.In this paper recommender system generates suggestions for by combining collaborating filtering on transaction data with rating predicted with demographics and item similarity. The final rating is weighted sum of ratings computed from transaction data, data and item data. The advantage of proposed system that recommender system can deal with cold start in case of new user or “new item” .and Also system has low MAE and RMSE in comparison of traditional collaborative filtering based on K-Nearest Neighbor approach.

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