Alawadhi Ranya, Hussain Tahani
Kuwait University, P.O.Box 5969 Safat 13060, Kuwait.
Kuwait Institute for Scientific Research, P.O.Box 24885 Safat 13109, Kuwait.
Procedia Comput Sci. 2021;184:52-59. doi: 10.1016/j.procs.2021.03.017. Epub 2021 May 18.
When the COVID-19 coronavirus hit, the context-aware application users were willing to relax their context privacy preferences during the lockdown to cope their lives while staying home. Such disturbance in the privacy behavior affected the performance of Machine Learning (ML) algorithm that is trained on normal behavior. In this paper, we present the impact of the pandemic on the efficiency of the learning algorithm implementation of a privacy protection system. The system is composed of three modules, in this work we focus on Privacy Preferences Manager (PPM) module which is implemented using hybrid methodology based on a Statistical Model (SM) and Logistic Regression (LR) learning algorithm. The efficiency of the hybrid methodology is assessed using two real-world datasets collected prior and during the COVID-19 pandemic. The results show that the pandemic significantly impacted the efficiency of the hybrid methodology by 13.05% and 15.22% for the accuracy and F1 score respectively.
当新冠病毒来袭时,情境感知应用程序的用户愿意在封锁期间放宽他们的情境隐私偏好,以便在居家期间应对生活。隐私行为的这种干扰影响了基于正常行为训练的机器学习(ML)算法的性能。在本文中,我们展示了疫情对隐私保护系统学习算法实施效率的影响。该系统由三个模块组成,在这项工作中,我们专注于隐私偏好管理器(PPM)模块,它是使用基于统计模型(SM)和逻辑回归(LR)学习算法的混合方法实现的。使用在新冠疫情之前和期间收集的两个真实世界数据集评估了混合方法的效率。结果表明,疫情分别使混合方法的准确率和F1分数的效率显著下降了13.05%和15.22%。