Mahajan, YashGuo, ZhenCho, Jin-HeeChen, Ing-Ray2023-02-272023-02-272023-02http://hdl.handle.net/10919/113973As online social networks (OSNs) become more prevalent, a new paradigm for problem solving through crowdsourcing has emerged. By leveraging the OSN platforms, users can post a problem to be solved and then form a team to collaborate and solve the problem. A common concern in OSNs is how to form effective collaborative teams, as various tasks are completed through online collaborative networks. A team’s diversity in expertise has received high attention to producing high team performance in developing team formation (TF) algorithms. However, the effect of team diversity on performance under different types of tasks has not been extensively studied. Another important issue is how to balance the need to preserve individuals’ privacy with the need to maximize performance through active collaboration, as these two goals may conflict with each other. This research has not been actively studied in the literature. In this work, we develop a team formation (TF) algorithm in the context of OSNs that can maximize team performance and preserve team members’ privacy under different types of tasks. Our proposed PRivAcy-Diversity-Aware Team Formation framework, called PRADA-TF, is based on trust relationships between users in OSNs where trust is measured based on a user’s expertise and privacy preference levels. The PRADA-TF algorithm considers the team members’ domain expertise, privacy preferences, and the team’s expertise diversity in the process of team formation. We leverage Mechanism Design as a game-theoretic technique in which the mechanism designer plays the role of team leader in forming a team. We use two realworld datasets (i.e., Netscience and IMDb) to generate different semi-synthetic datasets for constructing trust networks using a belief model (i.e., Subjective Logic) and identifying trustworthy users as candidate team member. We evaluate the effectiveness of our proposed PRADA-TF scheme in four variants against three baseline methods in the literature. Our analysis focuses on three performance metrics used in the study of OSNs: social welfare, privacy loss, and team diversity.application/pdfenIn CopyrightPrivacy-Preserving and Diversity-Aware Trust-based Team Formation in Online Social NetworksArticle2023-02-27IEEE Transactions on Services ComputingChen, Ing Ray [0000-0003-1657-6728]Cho, Jin-Hee [0000-0002-5908-4662]