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Machine Learning in Short Video APP User Activity Prediction

机译:短视频APP用户活动预测中的机器学习

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In order to improve the accuracy and reduce the cost of forecasting, this paper uses machine learning related technology to solve this problem in the user activity prediction model of short video industry. Continuous use of short video APP by active users is a sufficient and necessary condition for its success. The prediction of user activity has a direct guiding effect on the subsequent user loss warning. Based on the analysis of the impact on user activity, this paper extracts the characteristics according to registration log, startup log, shooting log and behavior log, and proposes a prediction algorithm based on model fusion for user activity. Based on the experimental data, the results show that the predicted AUC value reached 0.9514.
机译:为了提高准确性,降低预测成本,本文采用机器学习相关技术解决了短视频行业用户活动预测模型中的这一问题。活跃用户不断使用短视频APP是其成功的充分和必要条件。用户活动的预测对后续的用户丢失警告具有直接的指导作用。在对用户活动影响分析的基础上,根据注册日志,启动日志,射击日志和行为日志提取特征,提出了基于模型融合的用户活动预测算法。根据实验数据,结果表明预测的AUC值达到0.9514。

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