Recommender System using Collaborative Filtering and Demographic Features
Loading...
Files
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Abstract
Recommender systems use variety of data mining techniques and algorithms to identify
appropriate preferences of items for users in a system out of available millions of choices.
Recommender systems are classified into Collaborative filtering (CF), Content-Based
filtering (CBF) and Knowledge-Based filtering (KBF) and Hybrid filtering (HF) systems. In
present scenario recommender systems are facing many challenges like data sparsity, cold
start problem, scalability, synonymy, shilling attacks, gray sheep and black sheep problems
etc. These problems and challenges consequently affect the performance of recommender
systems to a great extent. Among these cold start problem is one of the challenges which
comes into scene when either a new user enters into a system or a new product arrives in
catalogue. Both situations lead to difficulty in predicting user preference in the absence of
availability of sufficient user rating history. The research work in this thesis is based upon
exploiting user demographic characteristics for finding similarity between new user and
already existing users in the system. The efficiency of recommender systems can be
improved by proposed Hybrid recommender system which calculates recommendations for
new user on the basis of his / her demographic attributes like age, gender, occupation
similarity of existing users in the system. The proposed approach results in generation of
more relevant and accurate recommendations as compared to traditional methods of finding
recommendations. The work is based upon problem domain related to online movie
recommendation using MovieLens dataset.
Description
ME, CSED
