Please use this identifier to cite or link to this item: http://10.1.7.192:80/jspui/handle/123456789/5170
Title: Enhancing Movie Recommender System
Authors: Patel, Ronak
Thakkar, Priyank
Kotecha, K.
Keywords: Movie Recommender System
Content Based Filtering
Collaborative Filtering
Hybrid Recommender System
Computer Faculty Paper
Faculty Paper
ITFCE037
ITDIR001
Issue Date: Jan-2014
Publisher: IAEME
Series/Report no.: ITFCE037-7;
Abstract: Recommender system helps customers buying products/items efficiently and at the same time benefits the business. It can be built using approaches like: (1) Collaborative Filtering (2) Content Based Filtering and (3) Hybrid Filtering. In Collaborative Recommender System, ratings of the most similar users (in case of user based collaborative filtering) or items (in case of item based collaborative filtering) are used to predict the rating of the new item. In Content Based Filtering, user profile is constructed based on the contentof theitems liked by the user in the past and then based on similarity between user and item profile, recommendations are made. Hybrid Filtering combines collaborative and content based approach. In this paper, we focus on movie recommendation task. Prediction task is modelled as classification task where our aim is to predict whether the item (movie in our case) will be liked or disliked by the user. In our work, we propose an item based recommender which combines usage, tag and movie specific data such as genres, star castand directors to improve the accuracy of the Recommender System. We have tested ourapproach using Hetrec2011-movielens-2kdataset. We use Accuracy and F-measure to evaluate the performance of our proposed system.
Description: International Journal of Advanced Research in Engineering and Technology (IJARET), Vol. 5 (1), January, 2014, Page No. 73 - 82
URI: http://hdl.handle.net/123456789/5170
ISSN: 0976 - 6480
Appears in Collections:Faculty Papers, CE

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