Dynamics of Social Networks: Multi-agent Information Fusion, Anticipatory Decision Making and Polling
Vikram Krishnamurthy

TL;DR
This paper surveys mathematical models and algorithms for social learning, information fusion, and decision making in social networks, addressing risk, behavioral economics, network dynamics, and efficient polling strategies.
Contribution
It extends structural results in stochastic control to social learning, incorporates behavioral economics into multi-agent fusion, and develops efficient polling methods for large networks.
Findings
Structural bounds on optimal social learning policies
Behavioral economics influence on decision strategies
Efficient node selection for polling in large networks
Abstract
This paper surveys mathematical models, structural results and algorithms in controlled sensing with social learning in social networks. Part 1, namely Bayesian Social Learning with Controlled Sensing addresses the following questions: How does risk averse behavior in social learning affect quickest change detection? How can information fusion be priced? How is the convergence rate of state estimation affected by social learning? The aim is to develop and extend structural results in stochastic control and Bayesian estimation to answer these questions. Such structural results yield fundamental bounds on the optimal performance, give insight into what parameters affect the optimal policies, and yield computationally efficient algorithms. Part 2, namely, Multi-agent Information Fusion with Behavioral Economics Constraints generalizes Part 1. The agents exhibit sophisticated decision…
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Taxonomy
TopicsGame Theory and Applications · Opinion Dynamics and Social Influence
