家电科技 ›› 2022, Vol. 0 ›› Issue (6): 98-102.doi: 10.19784/j.cnki.issn1672-0172.2022.06.018

• 论文 • 上一篇    下一篇

基于行为曲线的用户协同过滤控制推荐

樊其锋, 黑继伟, 吕闯, 庞敏, 尚喆, 夏云龙, 邢志钢   

  1. 广东美的制冷设备有限公司 广东佛山 528000
  • 出版日期:2022-12-01 发布日期:2023-01-10
  • 通讯作者: 邢志钢,E-mail:zhigang.xing@midea.com。
  • 作者简介:樊其锋,计算机系统结构专业理学硕士学位。研究方向:数据挖掘(Data Mining)、人工智能(AI)。地址:广东省佛山市顺德区北滘镇林港路22号美的家用空调事业部。E-mail:qifeng.fan@midea.com。

Collaborative-filtering recommendation of air conditioning operation based on behavioral curve

FAN Qifeng, HEI Jiwei, LV Chuang, PANG Min, SHANG Zhe, XIA Yunlong, XING Zhigang   

  1. Guangdong Midea Refrigeration Equipment Limited Company Foshan 528000
  • Online:2022-12-01 Published:2023-01-10

摘要: 研究基于行为曲线的用户协同过滤控制推荐,提出了优化的协同过滤算法:Collaborative Filtering Based on User Of Behavior Curve(UBC-based CF),使用更细粒度的行为曲线来表示用户,通过行为曲线相似度来计算用户之前的相似度,从而基于用户的协同过滤算法为用户提供更加精准的空调控制推荐服务。该方法主要包括以下几个方面:首先,提取用户历史操作行为,生成行为曲线,以表示用户;然后,计算每两条行为曲线的Jaccard相似度,从而评估每两个用户之间的相似度;接着,针对推荐用户,选取距离该用户最近的K个邻居及当前的控制参数,生成该用户的参数推荐;最后,通过实验来验证该方法的效果。从实验结果来看,该方法的推荐准确率达到91%,效果得到优化。

关键词: 用户行为, 实时推荐, 自动控制

Abstract: Studies user collaborative filtering control recommendation based on behavior curve, and creatively proposes an optimized UBC-based CF algorithm: Collaborative Filtering Based on User Of Behavior Curve. This algorithm uses more fine-grained behavior curves to represent users and the similarity of behavior curves to calculate the user's previous similarity, so as to provide customers with a more precise air conditioning control recommendation service. The method mainly includes the following steps: Firstly, extract the user's historical operation behavior and generate a behavior curve to represent the user; Then, calculate the Jaccard similarity of each two behavior curves to evaluate the similarity between each two users; Next, for the recommended user, select a certain number (K) of neighbors closest to the user and combine with the current control parameters to generate the user's parameter recommendation; Finally, several experiments are conducted and the effect is verified. It can be seen from the experimental results that the accuracy of this method can reach 91% and the effect is optimized.

Key words: User behavior, Real-time recommendation, Automatic control

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