The emergence of Artificial Intelligence of Things (AIoT) has provided novel insights for many social computing applications such as group recommender systems. As distance among people has been greatly shortened, it has been a more general demand to provide personalized services to groups instead of individuals. In order to capture group-level preference features from individuals, existing methods were mostly established via aggregation and face two aspects of challenges: secure data management workflow is absent, and implicit preference feedbacks is ignored. To tackle current difficulties, this paper proposes secure Artificial Intelligence of Things for implicit Group Recommendations (SAIoT-GR). As for hardware module, a secure IoT structure is developed as the bottom support platform. As for software module, collaborative Bayesian network model and non-cooperative game are can be introduced as algorithms. Such a secure AIoT architecture is able to maximize the advantages of the two modules. In addition, a large number of experiments are carried out to evaluate the performance of the SAIoT-GR in terms of efficiency and robustness.
翻译:由于人们之间的距离已大大缩短,向群体而不是个人提供个性化服务的要求更为普遍。为了从个人获取群体一级的偏好特征,现有方法大多通过汇总确定,并面临两个方面的挑战:缺乏安全的数据管理工作流程,而忽略了隐含的偏好反馈。为了解决当前的困难,本文件建议为隐含的小组建议(SAIOT-GR)建立安全的信息系统。关于硬件模块,一个安全的IOT结构是作为底部支持平台开发的。关于软件模块,可以采用合作的Bayesian网络模型和非合作游戏作为算法。这样一个安全的AIOT结构能够最大限度地发挥两个模块的优势。此外,还进行了大量实验,以评价SAIOT-GR在效率和稳健性方面的绩效。