基于深度神经网络的动态添加信息推荐系统

Yang Zhou
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引用次数: 3

摘要

推荐系统是一个被广泛研究的商业工具,它提供诸如用户感兴趣的产品或技术的推荐。推荐系统通过分析顾客行为来学习用户信息,并推荐满足顾客需求的产品。现有的主流推荐系统在动态添加新用户或新产品方面仍有改进的空间。该方法在向新用户或新产品推荐目标内容的同时,向原有推荐系统动态添加用户和产品信息。在保留CIN和DNN结构的同时,将网络关联添加到前后序列中。将添加序列的输入部分添加到之前的序列中,目的是动态更新用户和产品信息,根据序列关联调整网络参数,学习信息的高阶和低阶特征。对比实验结果表明,该方法可以动态添加新信息,且计算成本低。
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A Dynamically Adding Information Recommendation System based on Deep Neural Networks
The recommendation system is a widely researched business tool that provides recommendations such as products or technologies that users are interested. The recommendation system learns user information by analyzing customer behavior and recommends products to meet customer needs. The existing mainstream recommendation systems still have room for improvement in terms of dynamically adding new users or new products to the system. The proposed method dynamically adds user and product information to the original recommendation system while recommending target content to new users or new products. While retaining the CIN and DNN structures, the networks associations are added to the before and after sequences. The input part of the add sequence is added to the previous sequence, the purpose is to dynamically update user and product information, adjust networks parameters based on sequence associations and learn high-order and low-order features of information. The results of comparative experiments show that our method could add new information dynamically with the low computing cost.
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