Combining content-based and collaborative filtering for job recommendation system: A cost-sensitive Statistical Relational Learning approach

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摘要

Recommendation systems usually involve exploiting the relations among known features and content that describe items (content-based filtering) or the overlap of similar users who interacted with or rated the target item (collaborative filtering). To combine these two filtering approaches, current model-based hybrid recommendation systems typically require extensive feature engineering to construct a user profile. Statistical Relational Learning (SRL) provides a straightforward way to combine the two approaches through its ability to directly represent the probabilistic dependencies among the attributes of related objects. However, due to the large scale of the data used in real world recommendation systems, little research exists on applying SRL models to hybrid recommendation systems, and essentially none of that research has been applied to real big-data-scale systems. In this paper, we proposed a way to adapt the state-of-the-art in SRL approaches to construct a real hybrid job recommendation system. Furthermore, in order to satisfy a common requirement in recommendation systems (i.e. that false positives are more undesirable and therefore should be penalized more harshly than false negatives), our approach can also allow tuning the trade-off between the precision and recall of the system in a principled way. Our experimental results demonstrate the efficiency of our proposed approach as well as its improved performance on recommendation precision.

论文关键词:Recommendation system,Content-based filtering,Collaborative filtering,Statistical Relational Learning,Cost-sensitive learning

论文评审过程:Received 15 November 2016, Revised 22 August 2017, Accepted 26 August 2017, Available online 1 September 2017, Version of Record 4 October 2017.

论文官网地址:https://doi.org/10.1016/j.knosys.2017.08.017