Litcius/Paper detail

A crowdsourcing method for online social networks security assessment based on human-centric computing

Zhiyong Zhang, Junchang Jing, Xiaoxue Wang, Kim‐Kwang Raymond Choo, Brij B. Gupta

2020Human-centric Computing and Information Sciences27 citationsDOIOpen Access PDF

Abstract

Abstract Crowdsourcing and crowd computing are a trend that is likely to be increasingly popular, and there remain a number of research and operational challenges that need to be addressed. The human-centric computational abstraction called situation may be used to cope with these difficulties. In this paper, we focus on one such challenge, which is how to assign crowd assessment tasks about security and privacy in online social networks to the most appropriate users efficiently, effectively and accurately. Specifically, here we propose a novel task assignment method to facilitate crowd assessment, which improves the security and trustworthiness of social networking platforms, as well as a task assignment algorithm based on SocialSitu, which is a social-domain-focused situational analytics. Findings from our crowd assessment experiments on a real world social network Shareteches show that the precision and recall of the proposed method and algorithm are 0.491 and 0.538 higher than those of a random algorithm’s, as well as 0.336 and 0.366 higher than users’ theme-aware algorithm’s, respectively. Moreover, these results further suggest that our experimental evaluation enhance the security and privacy of online social networks.

Topics & Concepts

CrowdsourcingComputer scienceTask (project management)Data scienceSocial network (sociolinguistics)Situation awarenessFocus (optics)AnalyticsSocial computingDomain (mathematical analysis)Social mediaWorld Wide WebManagementEconomicsMathematical analysisAerospace engineeringMathematicsPhysicsOpticsEngineeringMobile Crowdsensing and CrowdsourcingPrivacy, Security, and Data ProtectionHuman Mobility and Location-Based Analysis