The Power of Local Information in Social Networks
Christian Borgs, Michael Brautbar, Jennifer Chayes, Sanjeev, Khanna, Brendan Lucier

TL;DR
This paper investigates how local information constraints affect the ability to solve optimization problems in social networks, demonstrating that limited visibility can significantly impact algorithm performance and strategic interaction.
Contribution
It introduces a model of local information algorithms constrained by network visibility, providing new algorithms and bounds for problems like maximum degree and network coverage.
Findings
Efficient algorithms for maximum degree in preferential attachment networks.
Linear query complexity for maximum degree in arbitrary networks.
Near-optimal solutions for network coverage with sufficient local information.
Abstract
We study the power of \textit{local information algorithms} for optimization problems on social networks. We focus on sequential algorithms for which the network topology is initially unknown and is revealed only within a local neighborhood of vertices that have been irrevocably added to the output set. The distinguishing feature of this setting is that locality is necessitated by constraints on the network information visible to the algorithm, rather than being desirable for reasons of efficiency or parallelizability. In this sense, changes to the level of network visibility can have a significant impact on algorithm design. We study a range of problems under this model of algorithms with local information. We first consider the case in which the underlying graph is a preferential attachment network. We show that one can find the node of maximum degree in the network in a…
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Taxonomy
TopicsComplex Network Analysis Techniques · Caching and Content Delivery · Opportunistic and Delay-Tolerant Networks
