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Collaborative Filtering with Label Consistent Restricted Boltzmann Machine

机译:使用标签的协作过滤一致限制博尔兹曼机

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The possibility of employing restricted Boltzmann machine (RBM) for collaborative filtering has been known for about a decade. However, there has been hardly any work on this topic since 2007. This work revisits the application of RBM in recommender systems. RBM based collaborative filtering only used the rating information; this is an unsupervised architecture. This work adds supervision by exploiting user demographic information and item metadata. A network is learned from the representation layer to the labels (metadata). The proposed label consistent RBM formulation improves significantly on the existing RBM based approach and yield results at par with the state-of-the-art latent factor based models.
机译:在大约十年中已知使用用于合作过滤的受限制的Boltzmann机器(RBM)的可能性。但是,自2007年以来,这一主题几乎没有任何工作。这项工作重新审视了RBM在推荐系统中的应用。基于RBM的协作过滤仅使用评级信息;这是一个无人监督的架构。这项工作通过利用用户人口统计信息和项目元数据来增加监督。从表示层学习到标签(元数据)的网络。所提出的标签一致的RBM制剂在现有的基于RBM的方法上显着改善,并与基于最先进的潜在因子的模型的屈服结果。

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