ROPPSA: TV Program Recommendation Based on Personality and Social Awareness

The rapid growth of mobile television (TV), smart TV, and Internet Protocol Television (IPTV) content due to the convergence of broadcasting and the Internet requires effective recommendation methods to select appropriate TV programs/channels. Many previous methods have been proposed to address this issue. However, imperative factors such as the utilization of personality traits and social properties to recommend programs for TV viewers remain a challenge. Consequently, in this paper, we propose a recommender algorithm called Recommendation of Programs via Personality and Social Awareness (ROPPSA) for TV viewers. ROPPSA utilizes normalization and folksonomy procedures to generate group recommendations for TV viewers who have common similarities in terms of personality traits and tie strength with a Target TV Viewer (TTV). Therefore, ROPPSA improves TV viewer cold-start and data sparsity situations by utilizing their personality traits and tie strengths. We conducted extensive experiments on a relevant dataset using standard evaluation metrics to substantiate our ROPPSA recommendation method. Results of our experimentation procedure depict the advantage, recommendation accuracy, and outperformance of ROPPSA in comparison with other contemporary methods in terms of precision, recall, f-measure (F1), and arithmetic mean (AM).

[1]  Feng Xia,et al.  Socially Aware Conference Participant Recommendation With Personality Traits , 2017, IEEE Systems Journal.

[2]  Mark F. Hornick,et al.  Extending Recommender Systems for Disjoint User/Item Sets: The Conference Recommendation Problem , 2012, IEEE Transactions on Knowledge and Data Engineering.

[3]  Kwang-Seok Hong,et al.  Personalized smart TV program recommender based on collaborative filtering and a novel similarity method , 2011, IEEE Transactions on Consumer Electronics.

[4]  Alessandro Vinciarelli,et al.  A Survey of Personality Computing , 2014, IEEE Transactions on Affective Computing.

[5]  Kristina Irion,et al.  Smart TV and the online media sector: User privacy in view of changing market realities , 2017 .

[6]  Hossam Afifi,et al.  Advanced IPTV Services Personalization Through Context-Aware Content Recommendation , 2012, IEEE Transactions on Multimedia.

[7]  Philip S. Yu,et al.  CHRS: Cold Start Recommendation Across Multiple Heterogeneous Information Networks , 2017, IEEE Access.

[8]  Shinjee Pyo,et al.  An Automatic Recommendation Scheme of TV Program Contents for (IP)TV Personalization , 2011, IEEE Transactions on Broadcasting.

[9]  Munchurl Kim,et al.  Automatic and personalized recommendation of TV program contents using sequential pattern mining for smart TV user interaction , 2013, Multimedia Systems.

[10]  Xingshe Zhou,et al.  TV3P: an adaptive assistant for personalized TV , 2004, IEEE Transactions on Consumer Electronics.

[11]  Bo Xu,et al.  SARVE-2: Exploiting Social Venue Recommendation in the Context of Smart Conferences , 2018, IEEE Transactions on Emerging Topics in Computing.

[12]  Søren Holdt Jensen,et al.  Audio-based age and gender identification to enhance the recommendation of TV content , 2013, IEEE Transactions on Consumer Electronics.

[13]  Milan Bjelica,et al.  Personalized program guide based on one-class classifier , 2016, IEEE Transactions on Consumer Electronics.

[14]  Feng Xia,et al.  Scholarly paper recommendation based on social awareness and folksonomy , 2015, Int. J. Parallel Emergent Distributed Syst..

[15]  José Juan Pazos-Arias,et al.  TV program recommendation for groups based on muldimensional TV-anytime classifications , 2009, IEEE Transactions on Consumer Electronics.

[16]  Jorge García Duque,et al.  What's on tv tonight? An efficient and effective personalized recommender system of TV programs , 2009, 2009 Digest of Technical Papers International Conference on Consumer Electronics.

[17]  Milan Z. Bjelica Unobtrusive relevance feedback for personalized TV program guides , 2011, IEEE Transactions on Consumer Electronics.

[18]  Jee-Hyong Lee,et al.  A Television Recommender System Learning a User’s Time-Aware Watching Patterns Using Quadratic Programming , 2018 .

[19]  Milan Bjelica,et al.  Context-aware personalized program guide based on neural network , 2012, IEEE Transactions on Consumer Electronics.

[20]  Chonghui Guo,et al.  A Resource Recommendation Method Based on User Taste Diffusion Model in Folksonomies , 2012, Int. J. Knowl. Syst. Sci..

[21]  Woontack Woo,et al.  Socially aware tv program recommender for multiple viewers , 2009, IEEE Transactions on Consumer Electronics.

[22]  Monika Henzinger,et al.  A Comprehensive Study of Features and Algorithms for URL-Based Topic Classification , 2011, TWEB.

[23]  Ricardo B. C. Prudêncio,et al.  A literature review of recommender systems in the television domain , 2015, Expert Syst. Appl..

[24]  Xiaohui Hu,et al.  Time Aware and Data Sparsity Tolerant Web Service Recommendation Based on Improved Collaborative Filtering , 2015, IEEE Transactions on Services Computing.

[25]  Mária Bieliková,et al.  Group Recommendations: Survey and Perspectives , 2014, Comput. Informatics.

[26]  Juan A. Recio-García,et al.  An architecture and functional description to integrate social behaviour knowledge into group recommender systems , 2014, Applied Intelligence.

[27]  Juan A. Recio-García,et al.  Including social factors in an argumentative model for Group Decision Support Systems , 2013, Decis. Support Syst..

[28]  Munchurl Kim,et al.  LDA-Based Unified Topic Modeling for Similar TV User Grouping and TV Program Recommendation , 2015, IEEE Transactions on Cybernetics.

[29]  Feng Xia,et al.  Improving Smart Conference Participation Through Socially Aware Recommendation , 2014, IEEE Transactions on Human-Machine Systems.

[30]  Nana Yaw Asabere,et al.  Improving Socially-Aware Recommendation Accuracy Through Personality , 2018, IEEE Transactions on Affective Computing.

[31]  Francesco Ricci,et al.  Personality-Based Active Learning for Collaborative Filtering Recommender Systems , 2013, AI*IA.