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Diffusion in Social Networks with Competing Products

by: KrzysztofR Apt, Evangelos Markakis

edited by: Giuseppe Persiano

In Algorithmic Game Theory, Vol. 6982 (2011), pp. 212-223, doi:10.1007/978-3-642-24829-0_20  Key: citeulike:11290306

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Abstract

We introduce a new threshold model of social networks, in which the nodes influenced by their neighbours can adopt one out of several alternatives. We characterize the graphs for which adoption of a product by the whole network is possible (respectively necessary) and the ones for which a unique outcome is guaranteed. These characterizations directly yield polynomial time algorithms that allow us to determine whether a given social network satisfies one of the above properties. We also study algorithmic questions for networks without unique outcomes. We show that the problem of computing the minimum possible spread of a product is NP-hard to approximate with an approximation ratio better than Ω(n), in contrast to the maximum spread, which is efficiently computable. We then move on to questions regarding the behavior of a node with respect to adopting some (resp. a given) product. We show that the problem of determining whether a given node has to adopt some (resp. a given) product in all final networks is co-NP-complete.


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