In this paper, a novel television (TV) program recommendation method is proposed by merging multiple preferences. We use channels and genres of programs, which is available information in standalone TVs, as features for the recommendation. The proposed method performs multi-time contextual profiling and constructs multiple-time contextual preference matrices of channels and genres. Since multiple preference models are constructed with different time contexts, there can be conflicts among them. In order to effectively merge the preferences with the minimum number of conflicts, we develop a quadratic programming model. The optimization problem is formulated with a minimum number of constraints so that the optimization process is scalable and ...
This paper describes methods of improving TV-watching experience using Machine Learning for Linear T...
Switching through the variety of available TV channels to find the most acceptable program at the cu...
This paper contains development of methods of improving TV-watching experience using Machine Learnin...
In this paper, a novel television (TV) program recommendation method is proposed by merging multiple...
With the increasing amount of TV programs and the integration of broadcasting and the Internet with ...
AbstractIn the area of intelligent systems, research about recommender systems is a critical topic a...
he expansion of Digital Television and the convergence between conventional broadcasting and televis...
The expansion of Digital Television and the convergence between conventional broadcasting and televi...
With the rapid development of smart TV industry, a large number of TV programs have been available f...
We propose VecLP, a novel Internet Video recommendation system working for Live TV Programs in this ...
As a new interactive service technology, IPTV has been extensively studying in the field of TV pro-g...
Nowadays, there are many channels and television (TV) programs available, and when the viewer is con...
Majority of recommender systems require explicit user interaction (ranking of movies and TV programs...
Over the past few years, technology has impacted heavily in the distribution of television content. ...
In IPTV systems, users’ watching behavior is influenced by contextual factors like time of day, day ...
This paper describes methods of improving TV-watching experience using Machine Learning for Linear T...
Switching through the variety of available TV channels to find the most acceptable program at the cu...
This paper contains development of methods of improving TV-watching experience using Machine Learnin...
In this paper, a novel television (TV) program recommendation method is proposed by merging multiple...
With the increasing amount of TV programs and the integration of broadcasting and the Internet with ...
AbstractIn the area of intelligent systems, research about recommender systems is a critical topic a...
he expansion of Digital Television and the convergence between conventional broadcasting and televis...
The expansion of Digital Television and the convergence between conventional broadcasting and televi...
With the rapid development of smart TV industry, a large number of TV programs have been available f...
We propose VecLP, a novel Internet Video recommendation system working for Live TV Programs in this ...
As a new interactive service technology, IPTV has been extensively studying in the field of TV pro-g...
Nowadays, there are many channels and television (TV) programs available, and when the viewer is con...
Majority of recommender systems require explicit user interaction (ranking of movies and TV programs...
Over the past few years, technology has impacted heavily in the distribution of television content. ...
In IPTV systems, users’ watching behavior is influenced by contextual factors like time of day, day ...
This paper describes methods of improving TV-watching experience using Machine Learning for Linear T...
Switching through the variety of available TV channels to find the most acceptable program at the cu...
This paper contains development of methods of improving TV-watching experience using Machine Learnin...