This paper investigates the use of automatically extracted visual features of videos in the context of recommender systems and brings some novel contributions in the domain of video recommendations. We propose a new content-based recommender system that encompasses a technique to automatically analyze video contents and to extract a set of representative stylistic features (lighting, color, and motion) grounded on existing approaches of Applied Media Theory. The evaluation of the proposed recommendations, assessed w.r.t. relevance metrics (e.g., recall) and compared with existing content-based recommender systems that exploit explicit features such as movie genre, shows that our technique leads to more accurate recommendations. Our proposed...
With Internet delivery of video content surging to an unprecedented level, video recommendation has ...
Whenever we watch a TV show or movie, we process a substantial amount of information that is conveye...
With the meteoric rise of video-on-demand (VOD) platforms, users face the challenge of sifting throu...
One of the challenges in video recommendation systems is the New Item problem, which happens when th...
Recommender Systems (RSs) play an increasingly important role in video-on-demand web applications s...
Previous works have shown the effectiveness of using stylistic visual features, indicative of the mo...
When a movie is uploaded to a movie Recommender System (e.g., YouTube), the system can exploit vario...
Video platforms have become indispensable components within a diverse range of applications, serving...
In this thesis, various machine learning domains have been combined in order to build a video recomm...
With the exponential growth of digital media platforms and the vast amount of available movie conten...
Item features play an important role in movie recommender systems, where recommendations can be gene...
Nowadays there is a growing interest in the artificial intelligence sector and its varied applicatio...
The purpose of the research described in this paper is to examine the existence of correlation betwe...
Nowadays, most recommender systems provide recommendations by either exploiting feedback given by s...
Several recommendation systems have been developed to support the user in choosing an interesting mo...
With Internet delivery of video content surging to an unprecedented level, video recommendation has ...
Whenever we watch a TV show or movie, we process a substantial amount of information that is conveye...
With the meteoric rise of video-on-demand (VOD) platforms, users face the challenge of sifting throu...
One of the challenges in video recommendation systems is the New Item problem, which happens when th...
Recommender Systems (RSs) play an increasingly important role in video-on-demand web applications s...
Previous works have shown the effectiveness of using stylistic visual features, indicative of the mo...
When a movie is uploaded to a movie Recommender System (e.g., YouTube), the system can exploit vario...
Video platforms have become indispensable components within a diverse range of applications, serving...
In this thesis, various machine learning domains have been combined in order to build a video recomm...
With the exponential growth of digital media platforms and the vast amount of available movie conten...
Item features play an important role in movie recommender systems, where recommendations can be gene...
Nowadays there is a growing interest in the artificial intelligence sector and its varied applicatio...
The purpose of the research described in this paper is to examine the existence of correlation betwe...
Nowadays, most recommender systems provide recommendations by either exploiting feedback given by s...
Several recommendation systems have been developed to support the user in choosing an interesting mo...
With Internet delivery of video content surging to an unprecedented level, video recommendation has ...
Whenever we watch a TV show or movie, we process a substantial amount of information that is conveye...
With the meteoric rise of video-on-demand (VOD) platforms, users face the challenge of sifting throu...