Most traditional recommender systems lack accuracy in the case where data used in the recommendation process is sparse. This study addresses the sparsity problem and aims to get rid of it by means of a content-boosted collaborative filtering approach applied to a web-based movie recommendation system. The main motivation is to investigate whether further success can be obtained by combining 'local and global user similarity' and 'effective missing data prediction' approaches, which were previously introduced and proved to be successful separately. The present work improves these approaches by taking the content information of the movies into account during the item similarity calculations. The comparison of the proposed approach with the or...
Abstract— We propose a recommendation system based on machine learning that recommends movies to use...
Technology has evolved a lot from basic to advanced such as Machine learning, deep learning, Interne...
Over the past years, the internet has broadened the horizon of various domains to interact and share...
The evolution of the Internet has brought us into a world that represents a huge amount of informati...
The popularity of movies has increased in recent years. There are thousands of films produced each y...
Recommender systems are programs which attempt to predict items that a user may be interest in. Reco...
There is a significant amount of ongoing research in the collaborative filtering field, with much of...
The most popular method collaborative filter approach is primarily used to handle the information ov...
Recommender Systems are tools to understand the huge amount of data available in the internet world....
Personalized recommendations are of key importance when it comes to increasing business value and sa...
Abstract— By acquiring a deeper understanding of the user's preferences, recommendation systems are ...
Available recommender systems mostly provide recommendations based on the users’ preferences by util...
Collaborative filtering recommender systems contribute to alleviating the problem of information ove...
Recommender systems, which filter information based on individual interests, represent a possible re...
With the exponential growth of digital media platforms and the vast amount of available movie conten...
Abstract— We propose a recommendation system based on machine learning that recommends movies to use...
Technology has evolved a lot from basic to advanced such as Machine learning, deep learning, Interne...
Over the past years, the internet has broadened the horizon of various domains to interact and share...
The evolution of the Internet has brought us into a world that represents a huge amount of informati...
The popularity of movies has increased in recent years. There are thousands of films produced each y...
Recommender systems are programs which attempt to predict items that a user may be interest in. Reco...
There is a significant amount of ongoing research in the collaborative filtering field, with much of...
The most popular method collaborative filter approach is primarily used to handle the information ov...
Recommender Systems are tools to understand the huge amount of data available in the internet world....
Personalized recommendations are of key importance when it comes to increasing business value and sa...
Abstract— By acquiring a deeper understanding of the user's preferences, recommendation systems are ...
Available recommender systems mostly provide recommendations based on the users’ preferences by util...
Collaborative filtering recommender systems contribute to alleviating the problem of information ove...
Recommender systems, which filter information based on individual interests, represent a possible re...
With the exponential growth of digital media platforms and the vast amount of available movie conten...
Abstract— We propose a recommendation system based on machine learning that recommends movies to use...
Technology has evolved a lot from basic to advanced such as Machine learning, deep learning, Interne...
Over the past years, the internet has broadened the horizon of various domains to interact and share...