Privacy-aware and Efficient Student Clustering for Sport Training with Hash in Cloud Environment.

Guoyan Diao, Fang Liu, Zhikai Zuo, Mohammad Kazem Moghimi
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引用次数: 1

Abstract

With the wide adoption of health and sport concepts in human society, how to effectively analyze the personalized sports preferences of students based on past sports training records has become a crucial and emergent task with positive research significance. However, the past sports training records of students are often accumulated with time and stored in a central cloud platform and therefore, the data volume is too large to be processed with quick response. In addition, the past sports training records of students often contain certain sensitive information, which probably discloses partial user privacy if we cannot protect the data well. Considering these two challenges, a privacy-aware and efficient student clustering approach, named PESC is proposed, which is based on a hash technique and deployed on a central cloud platform connecting multiple local servers. Concretely, in the cloud platform, each student is firstly assigned an index based on the past sports training records stored in a local server, through a uniform hash mapping operation. Then similar students are clustered and registered in the cloud platform based on the students' respective sport indexes. At last, we infer the personalized sport preferences of each student based on their belonged clusters. To prove the feasibility of PESC, we provide a case study and a set of experiments deployed on a time-aware dataset.

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云环境下基于哈希的运动训练隐私感知高效学生聚类。
随着人类社会对健康和运动理念的广泛接受,如何根据以往的运动训练记录,有效地分析学生的个性化运动偏好,成为一项具有积极研究意义的关键和紧迫任务。然而,学生以往的运动训练记录往往是随着时间的推移而积累,并存储在中央云平台上,数据量太大,无法快速响应处理。此外,学生以往的运动训练记录往往包含某些敏感信息,如果不能很好地保护数据,可能会泄露部分用户隐私。考虑到这两个挑战,提出了一种基于散列技术的隐私感知高效学生集群方法PESC,该方法部署在连接多个本地服务器的中央云平台上。具体而言,在云平台中,首先根据存储在本地服务器上的以往运动训练记录,通过统一的哈希映射操作,为每个学生分配一个索引。然后根据学生各自的运动指标对相似的学生进行聚类并在云平台上注册。最后,根据每个学生所属的群体,推断出每个学生的个性化体育偏好。为了证明PESC的可行性,我们提供了一个案例研究和一组部署在时间感知数据集上的实验。
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