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Heterogeneous Context-aware Recommendation Algorithm with Semi-supervised Tensor Factorization

机译:半监督张量分解的异构上下文感知推荐算法

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Data sparsity is one of the most challenging problems in recom-mender systems. In this paper, we tackle the data sparsity problem by proposing a heterogeneous context-aware semi-supervised tensor factorization method named HASS. Firstly, heterogeneous context are classified and processed by different modeling approaches. We use a tensor factorization model to capture user-item interaction contexts and use a matrix factorization model to capture both user attributed contexts and item attributed contexts. Secondly, different context models are optimized with semi-supervised co-training approach. Finally, the two sub-models are combined effectively by an weight fusing method. As a result, the HASS method has several distinguished advantages for mitigating the data sparsity problem. One is that the method can well perceive diverse influences of heterogeneous contexts and another is that a large number of unlabeled samples can be utilized by the co-training stage to further alleviate the data sparsity problem. The proposed algorithm is evaluated on real-world datasets and the experimental results show that HASS model can significantly improve recommendation accuracy by comparing with the existing state-of-art recommendation algorithms.
机译:数据稀疏性是推荐系统中最具挑战性的问题之一。在本文中,我们通过提出一种称为HASS的异构上下文感知半监督张量因子分解方法来解决数据稀疏性问题。首先,通过不同的建模方法对异构上下文进行分类和处理。我们使用张量分解模型来捕获用户-项目交互上下文,并使用矩阵分解模型来捕获用户属性上下文和项目属性上下文。其次,使用半监督协同训练方法优化了不同的上下文模型。最后,两个子模型通过权重融合方法有效地组合在一起。结果,HASS方法具有减轻数据稀疏性问题的几个显着优点。一种是该方法可以很好地感知异构上下文的各种影响,另一种是协同训练阶段可以利用大量未标记的样本来进一步缓解数据稀疏性问题。在现实世界的数据集上对提出的算法进行了评估,实验结果表明,与现有的最新推荐算法相比,HASS模型可以显着提高推荐准确性。

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