OCDCLGJul 1, 2013

Online discrete optimization in social networks in the presence of Knightian uncertainty

arXiv:1307.0473v24 citations
AI Analysis

This addresses collective learning in uncertain environments for social network applications, but it is incremental as it builds on existing regret minimization frameworks.

The paper tackles the problem of decentralized decision-making in social networks under Knightian uncertainty, where agents face individual and local-interaction costs without a probabilistic model, and shows that their strategy achieves regret scaling polylogarithmically with time and polynomially with network size.

We study a model of collective real-time decision-making (or learning) in a social network operating in an uncertain environment, for which no a priori probabilistic model is available. Instead, the environment's impact on the agents in the network is seen through a sequence of cost functions, revealed to the agents in a causal manner only after all the relevant actions are taken. There are two kinds of costs: individual costs incurred by each agent and local-interaction costs incurred by each agent and its neighbors in the social network. Moreover, agents have inertia: each agent has a default mixed strategy that stays fixed regardless of the state of the environment, and must expend effort to deviate from this strategy in order to respond to cost signals coming from the environment. We construct a decentralized strategy, wherein each agent selects its action based only on the costs directly affecting it and on the decisions made by its neighbors in the network. In this setting, we quantify social learning in terms of regret, which is given by the difference between the realized network performance over a given time horizon and the best performance that could have been achieved in hindsight by a fictitious centralized entity with full knowledge of the environment's evolution. We show that our strategy achieves the regret that scales polylogarithmically with the time horizon and polynomially with the number of agents and the maximum number of neighbors of any agent in the social network.

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