基于多源信息学习的个性化推荐方法研究

Keqing Guan, Xianli Kong
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引用次数: 0

摘要

个性化推荐可以有效解决大数据环境下信息过载对用户的负面影响,提升用户体验。如何构建有效的个性化推荐系统已成为业界和学术界共同关注的问题。基于多层感知器的基本思想,构建了一个多源信息的个性化推荐模型。通过引入用户和推荐项目的相关信息,进行迭代学习,提高用户偏好预测的准确性。结合多层感知器方法,构造了扩展模型。基于TensorFlow框架,采用批处理数据流方法对模型进行训练。建立了该方法的实现框架,并通过电影数据集验证了该方法的有效性。实验结果表明,该方法能有效提高用户偏好预测的准确性。
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Research on Personalized Recommendation Method Based on Multi-source Information Learning
Personalized recommendation can effectively solve the negative impact of information overload on users and improve user experience in the big data environment. How to build an effective personalized recommendation system has become a common concern of industry and academia. Based on the basic idea of multi-layer perceptron, this paper constructs a personalized recommendation model of multi-source information. By introducing the relevant information of users and recommended items, iterative learning is carried out to improve the accuracy of user preference prediction. Combined with multi-layer perceptron method, the extended model is constructed. Based on TensorFlow framework, the batch data flow method is used to train the model. The implementation framework of the method is built, and the effectiveness of the method is verified by movielens data set. Experimental results show that the proposed method can effectively improve the accuracy of user preference prediction.
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