With the rapid development of information technology, "information overload" has become the main theme that plagues people's online life. As an effective tool to help users quickly search for useful information, a personalized recommendation is more and more popular among people. In order to solve the sparsity problem of the traditional matrix factorization algorithm and the problem of low utilization of review document information, this paper proposes a Bicon-vMF algorithm based on improved ConvMF. This algorithm uses two parallel convolutional neural networks to extract deep features from the user review set and item review set respectively and fuses these features into the decomposition of the rating matrix, so as to construct the user latent model and the item latent model more accurately. The experimental results show that compared with traditional recommendation algorithms like PMF, ConvMF, and DeepCoNN, the method proposed in this paper has lower prediction error and can achieve a better recommendation effect. Specifically, compared with the previous three algorithms, the prediction errors of the algorithm proposed in this paper are reduced by 45.8%, 16.6%, and 34.9%, respectively.
翻译:随着信息技术的迅速发展,“信息超载”已成为困扰人们在线生活的主旨。作为帮助用户快速搜索有用信息的有效工具,个人化建议越来越受到人们的欢迎。为了解决传统矩阵乘数算法的广度问题和审查文件信息利用率低的问题,本文件根据改进的ConvMF提出Bicon-vMF算法。这一算法使用两个平行的神经神经神经网络分别从用户审查组和项目审查组中提取深层特征,并将这些特征结合到评级矩阵的分解中,以便更准确地构建用户潜伏模型和项目潜伏模型。实验结果显示,与传统的建议算法相比,如PMF、ConMF和DeepCONN,本文中提议的方法可以降低预测错误,并能够产生更好的建议效果。具体地说,与前三种算法相比,本文中提议的算法的预测错误分别减少45.8%、16.6%和34.9%。