基于用户流失的电子政务深度推荐系统

Yanan Wang, Airong Quan, Xiaonan Ma, Junqing Qu
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引用次数: 1

摘要

目前,各大政务类app已基本实现一站式运营。然而,由于政务种类繁多,如何根据用户行为为用户提供个性化的推荐服务,是智慧政府需要解决的问题。针对用户政府行为数据稀疏和隐藏特征难以挖掘的问题,提出了一种集成用户流失的双塔模型。构建深度神经网络表征用户项目特征,并考虑用户流失因子对特征权重的影响。同时,引入随机森林算法对用户流失特征进行加权,并结合双塔模型的特征实现个性化排名推荐。实验结果表明,我们提出的模型优于原有的特征,并且该模型已经成功部署在“我的宁夏”政府推荐系统中,用户体验得到了显著改善。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
E-government Deep Recommendation System Based on User Churn
At present, all major government-related APPs have basically achieved one-stop operation. However, due to the various categories of government affairs, how to provide users with personalized recommendation services based on user behavior is a problem that smart government needs to solve. Aiming at the problems of sparse user government behavior data and difficulty in mining hidden features, this paper proposes a two-tower model that integrates user churn. A deep neural network is constructed to characterize user item characteristics, and the influence of user churn factor on feature weights is also considered. At the same time, the random forest algorithm is introduced to weight the characteristics of user churn, and the characteristics of the two towers model are combined to achieve personalized ranking recommendation. The experimental results show that our proposed model is better than the original features, and this model has been successfully deployed in the “My Ningxia” government recommendation system, and the user experience has been significantly improved.
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