articleJun 18, 2014Closed access

Influence maximization

Nanyang Technological University

Indexed incrossref

Abstract

Given a social network G and a constant $k$, the influence maximization problem asks for k nodes in G that (directly and indirectly) influence the largest number of nodes under a pre-defined diffusion model. This problem finds important applications in viral marketing, and has been extensively studied in the literature. Existing algorithms for influence maximization, however, either trade approximation guarantees for practical efficiency, or vice versa. In particular, among the algorithms that achieve constant factor approximations under the prominent independent cascade (IC) model or linear threshold (LT) model, none can handle a million-node graph without incurring prohibitive overheads.

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738
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100%
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31
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Authors

3

Topics & keywords

Keywords
  • Maximization
  • Viral marketing
  • Computer science
  • Node (physics)
  • Constant (computer programming)
  • Approximation algorithm
  • Cascade
  • Mathematical optimization
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