Title of article :
RecomMetz: A context-aware knowledge-based mobile recommender system for movie showtimes
Author/Authors :
Colombo-Mendoza، نويسنده , , Luis Omar and Valencia-Garcيa، نويسنده , , Rafael and Rodrيguez-Gonzلlez، نويسنده , , Alejandro and Alor-Hernلndez، نويسنده , , Giner and Samper-Zapater، نويسنده , , José Javier، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2015
Pages :
21
From page :
1202
To page :
1222
Abstract :
Recommender systems are used to provide filtered information from a large amount of elements. They provide personalized recommendations on products or services to users. The recommendations are intended to provide interesting elements to users. Recommender systems can be developed using different techniques and algorithms where the selection of these techniques depends on the area in which they will be applied. This paper proposes a recommender system in the leisure domain, specifically in the movie showtimes domain. The system proposed is called RecomMetz, and it is a context-aware mobile recommender system based on Semantic Web technologies. In detail, a domain ontology primarily serving a semantic similarity metric adjusted to the concept of “packages of single items” was developed in this research. In addition, location, crowd and time were considered as three different kinds of contextual information in RecomMetz. In a nutshell, RecomMetz has unique features: (1) the items to be recommended have a composite structure (movie theater + movie + showtime), (2) the integration of the time and crowd factors into a context-aware model, (3) the implementation of an ontology-based context modeling approach and (4) the development of a multi-platform native mobile user interface intended to leverage the hardware capabilities (sensors) of mobile devices. The evaluation results show the efficiency and effectiveness of the recommendation mechanism implemented by RecomMetz in both a cold-start scenario and a no cold-start scenario.
Keywords :
Context-aware systems , Ontology reasoning , SEMANTIC WEB , Knowledge-based recommender systems
Journal title :
Expert Systems with Applications
Serial Year :
2015
Journal title :
Expert Systems with Applications
Record number :
2355515
Link To Document :
بازگشت