학술논문

Exploring The Effects of Link Recommendations on Social Networks: An Agent-Based Modeling Approach
Document Type
Conference
Source
2020 Spring Simulation Conference (SpringSim) Spring Simulation Conference (SpringSim), 2020. :1-12 May, 2020
Subject
Communication, Networking and Broadcast Technologies
Computing and Processing
General Topics for Engineers
Power, Energy and Industry Applications
Agent-based modeling
LinkedIn
Facebook
Companies
Recommender systems
online social network
social network analysis
mutual connection link recommendation system
friend-of-friend recommender
agent-based modeling
Language
Abstract
The vast majority of recommender system research has focused on improving performance accuracy, while limited work has explored their societal, network level effects. This paper demonstrates how simulation can be used to investigate macro level effects of online social network link recommendations, such as whether these technologies may be fragmenting or bridging communities of individuals. An agent-based model is presented that generates stylized online social networks with different percentages of real world contacts and link recommendations. Results show that networks with higher percentages of recommendation-based links produce more clustered, distinct, and dispersed communities, suggesting that these technologies could fragment society. Furthermore, scale-free network properties diminished with higher percentages of recommendations, suggesting that these technologies could be contributing to recent findings that social networks are at most ‘weakly’ scale-free. Building upon this research, further simulation work could inform the design of link recommendation algorithms that help connect both individuals and communities.