Title of article :
Increasing the Accuracy of Recommender Systems Using the Combination of K-Means and Differential Evolution Algorithms
Author/Authors :
Pazahr, Ali Department of Computer Engineering - Ahvaz Branch - Islamic Azad University, Ahvaz, Iran
Abstract :
Recommender systems are the systems that try to make recommendations to each
user based on performance, personal tastes, user behaviors, and the context that
match their personal preferences and help them in the decision-making process. One
of the most important subjects regarding these systems is to increase the system
accuracy which means how much the recommendations are close to the user interests.
In this paper, to achieve the mentioned aim we use a combination of K-means and
differential evolution algorithms. The K-means algorithm determines the best
recommendations for the current user based on the behavior of the other users. The
differential evolution algorithm is used to optimize the user clustering in the
recommender system. Given that the proposed model has been tested in a movie
domain, the films suggested to the current user, have the highest rates from the users
who are similar to the current user. The results gained from the simulation show the
superior performance of the proposed model in comparison to the related works with
an average increased accuracy of 0.01.
Farsi abstract :
فاقد چكيده فارسي
Keywords :
Recommender Systems , K-Means , Differential Evolution Algorithms , Clustering , Accuracy
Journal title :
Journal of Advances in Computer Research