Wang Ruyan, Liu Yuzhe, Zhang Puning, Li Xuefang, Kang Xuyuan
School of Communication and Information Engineering, Chongqing University of Posts and Telecommunications, Chongqing 400065, China.
Key Laboratory of Optical Communication and Networks, Chongqing 400065, China.
Sensors (Basel). 2020 Mar 30;20(7):1918. doi: 10.3390/s20071918.
There are massive entities with strong denaturation of state in the physical world, and users have urgent needs for real-time and intelligent acquisition of entity information, thus recommendation technologies that can actively provide instant and precise entity state information come into being. Existing IoT data recommendation methods ignore the characteristics of IoT data and user search behavior; thus the recommendation performances are relatively limited. Considering the time-varying characteristics of the IoT entity state and the characteristics of user search behavior, an edge-cloud collaborative entity recommendation method is proposed via combining the advantages of edge computing and cloud computing. First, an entity recommendation system architecture based on the collaboration between edge and cloud is designed. Then, an entity identification method suitable for edge is presented, which takes into account the feature information of entities and carries out effective entity identification based on the deep clustering model, so as to improve the real-time and accuracy of entity state information search. Furthermore, an interest group division method applied in cloud is devised, which fully considers user's potential search needs and divides user interest groups based on clustering model for enhancing the quality of recommendation system. Simulation results demonstrate that the proposed recommendation method can effectively improve the real-time and accuracy performance of entity recommendation in comparison with traditional methods.
现实世界中存在大量状态强烈变性的实体,用户对实体信息的实时智能获取有着迫切需求,因此能够主动提供即时且精确实体状态信息的推荐技术应运而生。现有的物联网数据推荐方法忽视了物联网数据及用户搜索行为的特点,因而推荐性能相对有限。考虑到物联网实体状态的时变特性以及用户搜索行为的特点,通过结合边缘计算和云计算的优势,提出了一种边缘云协同实体推荐方法。首先,设计了一种基于边缘与云协作的实体推荐系统架构。然后,提出了一种适用于边缘的实体识别方法,该方法考虑实体的特征信息并基于深度聚类模型进行有效的实体识别,以提高实体状态信息搜索的实时性和准确性。此外,设计了一种应用于云的兴趣组划分方法,该方法充分考虑用户的潜在搜索需求并基于聚类模型划分用户兴趣组,以提升推荐系统的质量。仿真结果表明,与传统方法相比,所提推荐方法能够有效提高实体推荐的实时性和准确性。