Journal ArticleOpen Access
A Comprehensive Collaborating Filtering Approach using Extended Matrix Factorization and Autoencoder in Recommender System
Authors
Author Affiliations
East West University
Published InInternational Journal of Advanced Computer Science and Applications
Year2019
Citations3
Abstract
Recommender system is an approach where users get suggestions based on their previous preferences. Nowadays, people are overwhelmed by the huge amount of information that is being present in any system. Sometimes, it is difficult for a user to find an appropriate item by searching the desired content. Recommender system assists users by providing suggestions of re-quired information or items based on the similar features among the users. Collaborative filtering is one of the most re-known process of recommender system where the recommendation is done by similar users or similar items. Matrix factorization is an approach which can be used to decompose a matrix into two or more matrix to generate features. Again, autoencoder is a deep learning based technique…
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