Generating personalized movie recommendations to users is a problem that most commonly relies on user-movie ratings. These ratings are generally used either to understand the user preferences or to recommend movies that users with similar rating patterns have rated highly. However, movie recommenders are often subject to the Cold-Start problem: new movies have not been rated by anyone, so, they will not be recommended to anyone; likewise, the preferences of new users who have not rated any movie cannot be learned. In parallel, Social-Media platforms, such as Twitter, collect great amounts of user feedback on movies, as these are very popular nowadays. This thesis proposes to explore feedback shared on Twitter to predict the popularity of ne...
As of today, most movie recommendation services base their recommendations on collaborative filterin...
As of today, most movie recommendation services base their recommendations on collaborative filterin...
Social media has become one of the most popular media in web and mobile application. In 2011, social...
In recommender systems, the cold-start problem is a common challenge. When a new item has no ratings...
Generating personalized movie recommendations to users is a problem that most commonly relies on use...
The advent of internet has served as an offspring for the significant growth of online services and ...
Cold start is the most frequent issue faced by recommender systems (RS). The reason for its happenin...
This thesis studies the opportunity to utilize posts from social media in recommender systems. Recom...
The use of recommendation systems (RSs) in e-commerce and digital media has attracted a great deal o...
There is a substantial increase in demand for recommender systems which have applications in a varie...
Data from Online Social Networks (OSNs) are providing analysts with an unprecedented access to publi...
As a tremendous number of mobile applications (apps) are readily available, users have difficulty in...
As of today, most movie recommendation services base their recommendations on collaborative filterin...
As of today, most movie recommendation services base their recommendations on collaborative filterin...
As of today, most movie recommendation services base their recommendations on collaborative filterin...
As of today, most movie recommendation services base their recommendations on collaborative filterin...
As of today, most movie recommendation services base their recommendations on collaborative filterin...
Social media has become one of the most popular media in web and mobile application. In 2011, social...
In recommender systems, the cold-start problem is a common challenge. When a new item has no ratings...
Generating personalized movie recommendations to users is a problem that most commonly relies on use...
The advent of internet has served as an offspring for the significant growth of online services and ...
Cold start is the most frequent issue faced by recommender systems (RS). The reason for its happenin...
This thesis studies the opportunity to utilize posts from social media in recommender systems. Recom...
The use of recommendation systems (RSs) in e-commerce and digital media has attracted a great deal o...
There is a substantial increase in demand for recommender systems which have applications in a varie...
Data from Online Social Networks (OSNs) are providing analysts with an unprecedented access to publi...
As a tremendous number of mobile applications (apps) are readily available, users have difficulty in...
As of today, most movie recommendation services base their recommendations on collaborative filterin...
As of today, most movie recommendation services base their recommendations on collaborative filterin...
As of today, most movie recommendation services base their recommendations on collaborative filterin...
As of today, most movie recommendation services base their recommendations on collaborative filterin...
As of today, most movie recommendation services base their recommendations on collaborative filterin...
Social media has become one of the most popular media in web and mobile application. In 2011, social...