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RACMF: robust attention convolutional matrix factorization for rating prediction

机译:RACMF:鲁棒的注意力卷积矩阵分解用于等级预测

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摘要

Matrix factorization is widely used in collaborative filtering, especially when the data are extremely large and sparse. To deal with the scale and sparsity problem of data, several recommender models adopt users and items' side information to improve the recommendation results. However, some existing works do not perform well enough for they are not effectively use the side information. For example, using bag-of-words model, topic model to gain the latent representation of words or merely utilizing items or users' side information, leads to the result that the performance deteriorates, especially when rating dataset is extremely large and sparse. To overcome the data sparsity problem, we present a hybrid model named robust attention convolutional matrix factorization (RACMF) model, which is composed of attention convolutional neural network (ACNN) and additional stacked denoising autoencoder (aSDAE); ACNN and aSDAE are used to extract the items' and users' latent factors, respectively. The experimental results show that our RACMF model has good prediction ability, even when the rating data are sparse or the scale of rating data is large. What's more, compared with the state-of-the-art model PHD, the present model RACMF increased the accuracy rate on ML-100k, ML-1m, ML-10m and AIV-6 datasets by 4.80%, 0.57%, 1.98% and 3.67%, respectively.
机译:矩阵分解在协作过滤中被广泛使用,特别是当数据非常大且稀疏时。为了处理数据的规模和稀疏性问题,一些推荐器模型采用了用户和项的辅助信息来改善推荐结果。但是,一些现有作品表现不佳,因为它们没有有效地使用辅助信息。例如,使用词袋模型,主题模型来获得词的潜在表示或仅利用项目或用户的附带信息,就会导致性能下降,尤其是在评级数据集非常庞大且稀疏的情况下。为了克服数据稀疏性问题,我们提出了一种混合模型,称为鲁棒注意力卷积矩阵分解(RACMF)模型,该模型由注意力卷积神经网络(ACNN)和附加的堆叠去噪自动编码器(aSDAE)组成; ACNN和aSDAE分别用于提取项目和用户的潜在因素。实验结果表明,即使评级数据稀疏或评级数据规模较大,我们的RACMF模型也具有良好的预测能力。而且,与最新模型PHD相比,本模型RACMF将ML-100k,ML-1m,ML-10m和AIV-6数据集的准确率提高了4.80%,0.57%,1.98%和3.67%。

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