Personalized Recommendation Model Based on Improved GRU Network in Big Data Environment

Hui Guo, Zheng Guo, Zhihong Liu
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Abstract

To address the diversity of user preferences and dynamic changes of interests in the personalized recommendation scenario, a personalized recommendation model based on the improved gated recurrent unit (GRU) network in a big data environment is proposed. First, in order to deal with outliers in sequence recommendation, context awareness sequence recommendation is introduced, and the dynamic changes of users’ interests are modeled by redefining the update gate and the reset gate of the GRU. Then, the duration information about how long users browse each item is processed and transformed to obtain the duration attention factor of each recommended item. And the duration attention factors and the item information are together used as the input of the proposed model for training and prediction. Finally, the auxiliary loss function is introduced to make up for the shortcomings of the traditional negative logarithmic likelihood function, and a super-parameter is applied to combine the auxiliary loss function with the negative logarithmic likelihood function so as to enhance the relationship between the interest representation and the accuracy of recommendation. Experiments show that the root mean square error (RMSE) of the proposed method in the Criteo dataset and MovieLens-1M dataset is 0.7257 and 0.7869, respectively, and the mean absolute error (MAE) is 0.5147 and 0.5893, respectively, which are better than those of the comparison methods. Therefore, the proposed method significantly outperforms the comparison methods in improving the accuracy of personalized recommendation in the system.
大数据环境下基于改进GRU网络的个性化推荐模型
针对个性化推荐场景中用户偏好的多样性和兴趣的动态变化,提出了一种基于改进的门控循环单元(GRU)网络的大数据环境下个性化推荐模型。首先,为了处理序列推荐中的异常值,引入上下文感知序列推荐,通过重新定义GRU的更新门和重置门,对用户兴趣的动态变化进行建模;然后,对用户浏览每个项目的时长信息进行处理和转换,得到每个推荐项目的时长关注因子。将持续注意因子和项目信息作为模型的输入,进行训练和预测。最后,引入辅助损失函数来弥补传统负对数似然函数的不足,并利用超参数将辅助损失函数与负对数似然函数结合起来,增强兴趣表示与推荐准确率之间的关系。实验表明,该方法在Criteo数据集和MovieLens-1M数据集上的均方根误差(RMSE)分别为0.7257和0.7869,平均绝对误差(MAE)分别为0.5147和0.5893,均优于对比方法。因此,该方法在提高系统个性化推荐的准确率方面明显优于对比方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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