Deep Collaborative Filtering System

Xin-Yi Wang Xin-Yi Wang, Hao-Ran Sun Xin-Yi Wang, Xu-Yang Yin Hao-Ran Sun, Chun-Zi Li Xu-Yang Yin, Sheng-Yu Liu Chun-Zi Li
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Abstract

Collaborative filtering-based models can use the interaction between users and products or the correlation between users and users, and between products and products. However, methods based on collaborative filtering can only grasp one type of relationship and still cannot fully fit. Various factors influencing user preferences make a lot of redundant information still not filtered out. We proposals a collaborative filtering model based on deep learning, which combines the item-item relationship learning in advance with a neural collaborative filtering network to effectually make recommendations. In the initial stage, learn low-dimensional vectors of compartments, and embed information that reflections the co-occurrence relationship between compartments. The prediction stage combines the trained embedding vector with the embedding vector of the module as a correction to the output result of the neural network. The benchmark data set MovieLens 1M is the experienced data set of this article, and the effectiveness of this method is verified on the data set. The experienced results are compared with some advanced methods on the data set. The results show that the model proposed in this paper is better than some methods based on collaborative filtering.  
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深度协同过滤系统
基于协同过滤的模型可以利用用户与产品之间的交互、用户与用户之间、产品与产品之间的相关性。然而,基于协同过滤的方法只能把握一种类型的关系,仍然不能完全拟合。影响用户偏好的各种因素使得大量冗余信息仍未被过滤掉。我们提出了一种基于深度学习的协同过滤模型,该模型将预先的物品-物品关系学习与神经协同过滤网络相结合,有效地进行推荐。在初始阶段,学习隔间的低维向量,并嵌入反映隔间之间共现关系的信息。预测阶段将训练好的嵌入向量与模块的嵌入向量相结合,作为对神经网络输出结果的修正。基准数据集MovieLens 1M是本文的经验数据集,在该数据集上验证了该方法的有效性。在数据集上将经验结果与一些先进的方法进行了比较。结果表明,本文提出的模型优于基于协同过滤的方法。
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