Context-aware LDA: Balancing Relevance and Diversity in TV Content Recommenders

Abstract

In the vast and expanding ocean of digital content, users are hardly satisfied with recommended programs solely based on static user patterns and common statistics. Therefore, there is growing interest in recommendation approaches that aim to provide a certain level of diversity, besides precision and ranking. Context-awareness, which is an effective way to express dynamics and adaptivity, is widely used in recommender systems to set a proper balance between ranking and diversity.In light of these observations, we introduce a recommender with a context-aware probabilistic graphical model and apply it to a campus-wide TV content delivery system named "Vision". Within this recommender, selection criteria of candidate fields and contextual factors are designed and users' dependencies on their personal preference or the aforementioned contextual influences can be distinguished. Most importantly, as to the role of balancing relevance and diversity, final experiment results prove that context-aware LDA can evidently outperform other algorithms on both metrics. Thus this scalable model can be flexibly used for different recommendation purposes.

@inproceedings{yuan_context-aware_2015,
  title = {Context-aware {LDA}: {Balancing} {Relevance} and {Diversity} in {TV} {Content} {Recommenders}},
  url = {https://comcast.app.box.com/recsystv-2015-yuan},
  abstract = {In the vast and expanding ocean of digital content, users are hardly satisfied with recommended programs solely based on static user patterns and common statistics. Therefore, there is growing interest in recommendation approaches that aim to provide a certain level of diversity, besides precision and ranking. Context-awareness, which is an effective way to express dynamics and adaptivity, is widely used in recom-mender systems to set a proper balance between ranking and diversity. In light of these observations, we introduce a recommender with a context-aware probabilistic graphi-cal model and apply it to a campus-wide TV content de-livery system named “Vision”. Within this recommender, selection criteria of candidate fields and contextual factors are designed and users’ dependencies on their personal pref-erence or the aforementioned contextual influences can be distinguished. Most importantly, as to the role of balanc-ing relevance and diversity, final experiment results prove that context-aware LDA can evidently outperform other al-gorithms on both metrics. Thus this scalable model can be flexibly used for different recommendation purposes.},
  booktitle = {Proceedings of the 2nd Workshop on Recommendation Systems for Television and Online Videos (RecSysTV 2015)},
  author = {Yuan, Jing and Sivrikaya, Fikret and Hopfgartner, Frank and Lommatzsch, Andreas and Mu, Mu},
  month = sep,
  year = {2015}
}
Authors:
Jing Yuan, Fikret Sivrikaya, Frank Hopfgartner, Andreas Lommatzsch, Mu Mu
Category:
Conference Paper
Year:
2015
Location:
Workshop RecsysTV, in conjunction with RecSys 2015, 19th Sept. Vienna, Austria