Item features play an important role in movie recommender systems, where recommendations can be generated by using explicit or implicit preferences of users on attributes such as genres. Traditionally, movie features are human-generated, either editorially or by leveraging the wisdom of the crowd. In this short paper, we present a recommender system for movies based of Factorization Machines that makes use of the low-level visual features extracted automatically from movies as side information. Low-level visual features - such as lighting, colors and motion - represent the design aspects of a movie and characterize its aesthetic and style. Our experiments on a dataset of more than 13K movies show that recommendations based on low-level visu...
This paper presents a framework for the classification of feature films into genres, based only on c...
This master thesis investigates novel methods using human emotion as contextual information to estim...
Movie recommendation systems are becoming increasingly popular, with many businesses looking to leve...
In this paper, we present an ongoing work that will ultimately result in a movie recommender system ...
Recommender Systems (RSs) play an increasingly important role in video-on-demand web applications s...
[[abstract]]In this paper, we propose an approach to category the film kinds using low-level feature...
With the exponential growth of digital media platforms and the vast amount of available movie conten...
When a movie is uploaded to a movie Recommender System (e.g., YouTube), the system can exploit vario...
A recommender system is a tool for recommending personalized content for users based on previous beh...
BackgroundIn this paper we present a model of parameters to aesthetically characterize films using a...
BackgroundIn this paper we present a model of parameters to aesthetically characterize films using a...
In the last years, the popularity of video-on-demand services has been constantly increasing, especi...
With the development of the entertainment and film industry, people have more chances to access movi...
A recommendation system is a system that provides online users with recommendations for particular r...
Abstract— We propose a recommendation system based on machine learning that recommends movies to use...
This paper presents a framework for the classification of feature films into genres, based only on c...
This master thesis investigates novel methods using human emotion as contextual information to estim...
Movie recommendation systems are becoming increasingly popular, with many businesses looking to leve...
In this paper, we present an ongoing work that will ultimately result in a movie recommender system ...
Recommender Systems (RSs) play an increasingly important role in video-on-demand web applications s...
[[abstract]]In this paper, we propose an approach to category the film kinds using low-level feature...
With the exponential growth of digital media platforms and the vast amount of available movie conten...
When a movie is uploaded to a movie Recommender System (e.g., YouTube), the system can exploit vario...
A recommender system is a tool for recommending personalized content for users based on previous beh...
BackgroundIn this paper we present a model of parameters to aesthetically characterize films using a...
BackgroundIn this paper we present a model of parameters to aesthetically characterize films using a...
In the last years, the popularity of video-on-demand services has been constantly increasing, especi...
With the development of the entertainment and film industry, people have more chances to access movi...
A recommendation system is a system that provides online users with recommendations for particular r...
Abstract— We propose a recommendation system based on machine learning that recommends movies to use...
This paper presents a framework for the classification of feature films into genres, based only on c...
This master thesis investigates novel methods using human emotion as contextual information to estim...
Movie recommendation systems are becoming increasingly popular, with many businesses looking to leve...