Utilizing Information Optimally to Influence Distributed Network Routing

2019 IEEE 58TH CONFERENCE ON DECISION AND CONTROL (CDC)(2019)

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摘要
How can a system designer exploit system-level knowledge to derive incentives to optimally influence social behavior? The literature on network routing contains many results studying the application of monetary tolls to influence behavior and improve the efficiency of self-interested network traffic routing. These results typically fall into two categories: (1) optimal tolls which incentivize socially-optimal behavior for a known realization of the network and population, or (2) robust tolls which provably reduce congestion given uncertainty regarding networks and user types, but may fail to optimize routing in general. This paper advances the study of robust influencing, mechanisms asking how a system designer can optimally exploit additional information regarding the network structure and user price sensitivities to design pricing mechanisms which influence behavior. We design optimal scaled marginal-cost pricing mechanisms for a class of parallel-network routing games and derive the tight performance guarantees when the network structure and/or the average user price-sensitivity is known. Our results demonstrate that from the standpoint of the system operator, in general it is more important to know the structure of the network than it is to know distributional information regarding the user population.
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关键词
user population,influence distributed network routing,system designer,system-level knowledge,social behavior,monetary tolls,self-interested network traffic routing,socially-optimal behavior,robust tolls,user types,network structure,user price sensitivities,design optimal,marginal-cost pricing mechanisms,parallel-network routing games,average user price-sensitivity,system operator,distributional information
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