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Detecting Influence Campaigns in Social Networks Using the Ising Model (1805.10244v1)

Published 25 May 2018 in cs.SI, physics.soc-ph, and stat.AP

Abstract: We consider the problem of identifying coordinated influence campaigns conducted by automated agents or bots in a social network. We study several different Twitter datasets which contain such campaigns and find that the bots exhibit heterophily - they interact more with humans than with each other. We use this observation to develop a probability model for the network structure and bot labels based on the Ising model from statistical physics. We present a method to find the maximum likelihood assignment of bot labels by solving a minimum cut problem. Our algorithm allows for the simultaneous detection of multiple bots that are potentially engaging in a coordinated influence campaign, in contrast to other methods that identify bots one at a time. We find that our algorithm is able to more accurately find bots than existing methods when compared to a human labeled ground truth. We also look at the content posted by the bots we identify and find that they seem to have a coordinated agenda.

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Authors (2)
  1. Nicolas Guenon des Mesnards (5 papers)
  2. Tauhid Zaman (23 papers)
Citations (11)

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