TY - GEN
T1 - Can Reinforcement Learning Enhance Social Capital?
AU - Zhao, He
AU - Su, Hongyi
AU - Chen, Yang
AU - Liu, Jiamou
AU - Yan, Bo
AU - Zheng, Hong
N1 - Publisher Copyright:
© Springer Nature Singapore Pte Ltd 2020.
PY - 2020
Y1 - 2020
N2 - Social capital captures the positional advantage gained by an individual by being in a social network. A well-known dichotomy defines two types of social capital: bonding capital, which refers to welfare such as trust and norms, and bridging capital, which refers to benefits in terms of influence and power. We present a framework where these notions are mathematically conceptualized. Through the framework, we discuss the process when an individual gains social capital through building new edges. We explore two questions: (1) How would an individual optimally form new relations? (2) What are the impacts of the network structure on the individual’s social capital? For these questions, we adopt a paradigm where the individual is a utility-driven agent who acquires knowledge about the network through repeated trial-and-error. In this paradigm, we propose two reinforcement learning algorithms: one guarantees the convergence to optimal values in theory, while the other is efficient in practice. We conduct experiments over both synthetic and real-world networks. Experimental results indicate that a centralized structure can enhance the performance of learning.
AB - Social capital captures the positional advantage gained by an individual by being in a social network. A well-known dichotomy defines two types of social capital: bonding capital, which refers to welfare such as trust and norms, and bridging capital, which refers to benefits in terms of influence and power. We present a framework where these notions are mathematically conceptualized. Through the framework, we discuss the process when an individual gains social capital through building new edges. We explore two questions: (1) How would an individual optimally form new relations? (2) What are the impacts of the network structure on the individual’s social capital? For these questions, we adopt a paradigm where the individual is a utility-driven agent who acquires knowledge about the network through repeated trial-and-error. In this paradigm, we propose two reinforcement learning algorithms: one guarantees the convergence to optimal values in theory, while the other is efficient in practice. We conduct experiments over both synthetic and real-world networks. Experimental results indicate that a centralized structure can enhance the performance of learning.
KW - Network building
KW - Reinforcement learning
KW - Social capital
KW - Social network
UR - http://www.scopus.com/inward/record.url?scp=85080872477&partnerID=8YFLogxK
U2 - 10.1007/978-981-15-3281-8_14
DO - 10.1007/978-981-15-3281-8_14
M3 - Conference contribution
AN - SCOPUS:85080872477
SN - 9789811532801
T3 - Communications in Computer and Information Science
SP - 157
EP - 171
BT - Web Information Systems Engineering - WISE 2019 Workshop, Demo, and Tutorial, Revised Selected Papers
A2 - U, Leong Hou
A2 - Yang, Jian
A2 - Cai, Yi
A2 - Karlapalem, Kamalakar
A2 - Liu, An
A2 - Huang, Xin
PB - Springer
T2 - 20th International Conference on Web Information Systems Engineering, WISE 2019 and on the International Workshop on Web Information Systems in the Era of AI, 2019
Y2 - 19 January 2020 through 22 January 2020
ER -