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A topic attention mechanism and factorization machines based mobile application recommendation method

机译:基于主题的主题引人注目机制和分解机的移动应用推荐方法

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摘要

Faced with the explosive growth of mobile applications, how to recommend mobile applications accurately and efficiently for users to choose their desirable and interesting mobile applications, which has become a challenging issue nowadays. To solve this problem, we propose a topic attention mechanism and FMs based mobile application recommendation method. Firstly, it uses LSA to obtain the global topic of mobile application description text. Then, the local semantic representations of mobile application are trained by BiLSTM model. Secondly, as for the global topic information and local semantic information in the content representation of mobile application description text, attention mechanism is performed to distinguish the contribution degree of different words and gain their weight values. Thirdly, the classification and prediction of mobile application are completed by using the softmax activation function through a full connection layer. Finally, based on user's searching requirement, it exploits factorization machines to combine the various features of the classified mobile applications to rank and recommend the user's expected mobile application with higher predicted score. The evaluation is conducted on a real and open dataset Mobile App Store, and the experimental results indicate that the performance of the proposed approach is better than other baseline methods in terms of precision, recall, F1-score, MAE, RMSE, and AUC.
机译:面对移动应用的爆炸性增长,如何准确且有效地推荐移动应用程序,以便用户选择他们所需和有趣的移动应用,这已经成为如今的具有挑战性的问题。为解决这个问题,我们提出了一个主题注意机制和基于FMS的移动应用推荐方法。首先,它使用LSA获取移动应用程序描述文本的全局主题。然后,移动应用程序的局部语义表示由Bilstm模型训练。其次,如全局主题信息和局部语义信息在移动应用程序描述文本的内容表示中,执行注意机制以区分不同词的贡献程度并获得其权重值。第三,通过使用全连接层使用SoftMax激活函数来完成移动应用程序的分类和预测。最后,基于用户的搜索要求,它利用分解机来组合分类的移动应用程序的各种特征来等级,并推荐用户的预测得分的预期移动应用程序。评估是在真实的和开放的数据集移动应用商店进行的,实验结果表明,该方法的性能优于精确,召回,F1分数,MAE,RMSE和AUC方面的其他基线方法。

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