In the last years, the popularity of video-on-demand services has been constantly increasing, especially for the young audiences who are more adept at using new technologies. Through those platforms, the viewers have access to a huge volume of movies at any moment that makes the viewing decision for most of them a very challenging task. Recommender systems are employed by video-on-demand providers to address the former challenge. We propose a novel movie recommender system that filters movies based on the genre-related visual elements of their trailers. The proposed system utilizes a 3D pre-trained deep ConvNet to extract spatio-temporal deep features from the trailers which then are combined, through a Deep Bag of Segments (DBoS) pooling n...
In order to make recommendations to a user, a recommender mainly uses two approaches: content-based ...
Recommender systems help people make decisions. They are particularly useful for product recommendat...
Recommender systems are being used in streaming service platforms to provide users with personalized...
When a movie is uploaded to a movie Recommender System (e.g., YouTube), the system can exploit vario...
Recommendation systems, the best way to deal with information overload, are widely utilized to provi...
Nowadays there is a growing interest in the artificial intelligence sector and its varied applicatio...
With the exponential growth of digital media platforms and the vast amount of available movie conten...
Movie recommendation systems are becoming increasingly popular, with many businesses looking to leve...
In streaming platforms, recommendation algorithms play a crucial role in recommending content. For s...
Over the past years, the internet has broadened the horizon of various domains to interact and share...
Abstract— We propose a recommendation system based on machine learning that recommends movies to use...
With the development of the entertainment and film industry, people have more chances to access movi...
Item features play an important role in movie recommender systems, where recommendations can be gene...
With the development of the network, society has moved into the data era, and the amount of data is ...
Recommendation is an ideology that works as choice-based system for the end users. Users are recomme...
In order to make recommendations to a user, a recommender mainly uses two approaches: content-based ...
Recommender systems help people make decisions. They are particularly useful for product recommendat...
Recommender systems are being used in streaming service platforms to provide users with personalized...
When a movie is uploaded to a movie Recommender System (e.g., YouTube), the system can exploit vario...
Recommendation systems, the best way to deal with information overload, are widely utilized to provi...
Nowadays there is a growing interest in the artificial intelligence sector and its varied applicatio...
With the exponential growth of digital media platforms and the vast amount of available movie conten...
Movie recommendation systems are becoming increasingly popular, with many businesses looking to leve...
In streaming platforms, recommendation algorithms play a crucial role in recommending content. For s...
Over the past years, the internet has broadened the horizon of various domains to interact and share...
Abstract— We propose a recommendation system based on machine learning that recommends movies to use...
With the development of the entertainment and film industry, people have more chances to access movi...
Item features play an important role in movie recommender systems, where recommendations can be gene...
With the development of the network, society has moved into the data era, and the amount of data is ...
Recommendation is an ideology that works as choice-based system for the end users. Users are recomme...
In order to make recommendations to a user, a recommender mainly uses two approaches: content-based ...
Recommender systems help people make decisions. They are particularly useful for product recommendat...
Recommender systems are being used in streaming service platforms to provide users with personalized...