家电科技 ›› 2022, Vol. 0 ›› Issue (zk): 650-655.doi: 10.19784/j.cnki.issn1672-0172.2022.99.145

• 第五部分 健康适老与智能 • 上一篇    下一篇

基于机器学习的电压力锅智能预约推荐算法研究

尚喆, 严家璎   

  1. 美的集团(上海)有限公司 上海 201799
  • 发布日期:2023-03-28
  • 作者简介:严家璎,女。研究方向:机器学习,深度学习算法研究。E-mail:yanjy16@midea.com。

Research on intelligent reservation recommendation algorithm of electric pressure cooker based on XGboost

SHANG Zhe, YAN Jiaying   

  1. Midea Group (Shanghai) Co., Ltd. Shanghai 201799
  • Published:2023-03-28

摘要: 基于电压力锅用户使用行为数据的分析,可以明显发现用户使用习惯有较强的规律性。进一步对用户进行聚类分析后发现不同类型的用户之间有较大的差异性,落到个体用户上该差距会进一步加大。通过本地的电压力锅使用记录数据的时间节点,与功能选项及设定参数信息,通过机器学习模型XGBoost及统计分析知识进行多维的数据挖掘,对电压力锅的用户使用习惯规律进行解读,并与现有的IoT功能进行结合,通过用户的历史预约时间,使用功能内容等数据完成对个体用户的预约提醒及用户使用功能参数的智能推荐预测,从而加强电压力锅智能功能对于用户使用行为的引导作用,进一步增强厨房小电与用户的智能交互功能。

关键词: 大数据分析, 机器学习, XGBoost, 智能预测, 智能交互

Abstract: Based on the analysis of electric pressure cooker user behavior data, it is clear that user habits have a strong regularity. Further clustering analysis of users reveals that there are large differences between different types of users, and the gap is further increased when it comes to individual users. Through the time nodes of the local electric pressure cooker usage data, and the information of function options and setting parameters, use the machine learning model XGBoost and statistical analysis knowledge to carry out multi-dimensional data mining, and interpret the user usage habits of electric pressure cookers, and combine with the existing iot function, and complete the data of individual users through the user's historical reservation time, use function content, etc. The data of users' historical reservation time and function content can be used to remind individual users of the reservation and the intelligent recommendation and prediction of users' function parameters, so as to strengthen the intelligent function of electric pressure cooker for the guidance of users' use behavior and further enhance the intelligent interaction between kitchen appliances and users.

Key words: Big data analytics, Machine learning, XGBoost, Intelligent prediction, Intelligent interaction

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