Click Here for
Track Your Paper
ISSN:2454-4116

International Journal of New Technology and Research

Impact Factor 3.953

(An ISO 9001:2008 Certified Online Journal)
India | Germany | France | Japan

Comparing Content Based and Collaborative Filtering in Recommender Systems

( Volume 3 Issue 4,April 2017 ) OPEN ACCESS
Author(s):

Parul Aggarwal, Vishal Tomar, Aditya Kathuria

Abstract:

In daily life we need many things to be searched over the internet, for search purpose there are many search engines available. Whenever we search something we try to get the most relevant results, and this can be achieved using Recommender systems.In a world where the number of choices can be overwhelming, recommender systems help users find and evaluate items of interest. They connect users with items to “consume” (purchase, view, listen to, etc.) by associating the content of recommended items or the opinions of other individuals with the consuming user’s actions or opinions. The paper presents an overview of the field of recommender systems and describes the difference between two of the most used approaches in recommender systems, i.e. Collaborative Filtering and Content based Filtering Techniques.

Paper Statistics:

Total View : 659 | Downloads : 650 | Page No: 65-67 |

Cite this Article:
Click here to get all Styles of Citation using DOI of the article.