Citation:
Francisco Martinez-Pabon, Juan Camilo Ospina-Quintero, Gustavo Ramirez-Gonzalez, Mario Munoz-Organero, "Recommending Ads from Trustworthy Relationships in Pervasive Environments", Mobile Information Systems, vol. 2016, Article ID 8593173, 18 pages, 2016
Sponsor:
This work was supported by the University of Cauca through Project VRI 3593 “SMARTA: Modelo para el despliegue de publicidad en entornos de computación ubicua soportado en un esquema de cooperación Smart TV-Smartphone.” Juan Camilo Ospina is funded by the Clúster CreaTIC and Colciencias young researcher program through the project “ScoRPICUS: Sistema de recomendaciones para entornos de publicidad ubicua apoyado en información contextual y redes sociales.” Francisco Martinez is funded by Colciencias Doctoral Scholarship no. 567. Part of this work was conducted at Carlos III University of Madrid, Spain, where Francisco Martinez and Juan Camilo Ospina were visiting scholars in 2014 and 2015, respectively. Special thanks are due to Fundación InnovaGen, SmartSoft Play, and University of Cauca volunteers for their valuable support during the experiments.
The use of pervasive computing technologies for advertising purposes is an interesting emergent field for large, medium, and small companies. Although recommender systems have been a traditional solution to decrease users' cognitive effort to find good and perThe use of pervasive computing technologies for advertising purposes is an interesting emergent field for large, medium, and small companies. Although recommender systems have been a traditional solution to decrease users' cognitive effort to find good and personalized items, the classic collaborative filtering needs to include contextual information to be more effective. The inclusion of users' social context information in the recommendation algorithm, specifically trust in other users, may be a mechanism for obtaining ads' influence from other users in their closest social circle. However, there is no consensus about the variables to use during the trust inference process, and its integration into a classic collaborative filtering recommender system deserves a deeper research. On the other hand, the pervasive advertising domain demands a recommender system evaluation from a novelty/precision perspective. The improvement of the precision/novelty balance is not only a matter related to the recommendation algorithm itself but also a better recommendations' display strategy. In this paper, we propose a novel approach for a collaborative filtering recommender system based on trust, which was tested throughout a digital signage prototype using a multiscreen scheme for recommendations delivery to evaluate our proposal using a novelty/precision approach.[+][-]