| Literature DB >> 31819120 |
Ivan Garibay1, Alexander V Mantzaris2, Amirarsalan Rajabi3, Cameron E Taylor4.
Abstract
This work explores simulations of polarized discussions from a general and theoretical premise. Specifically the question of whether a plausible avenue exists for a subgroup in an online social network to find a disagreement beneficial and what that benefit could be. A methodological framework is proposed which represents key factors that drives social media engagement including the iterative accumulation of influence and the dynamics for the asymmetric treatment of messages during a disagreement. It is shown that prior to a polarization event a trend towards a more uniform distribution of relative influence is achieved which is then reversed by the polarization event. The reasons for this reversal are discussed and how it has a plausible analogue in real world systems. A pair of inoculation strategies are proposed which aim at returning the trend towards uniform influence across users while refraining from violating user privacy (by remaining topic agnostic) and from user removal operations.Entities:
Year: 2019 PMID: 31819120 PMCID: PMC6901574 DOI: 10.1038/s41598-019-55178-8
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Figure 1How influence scores change before and after polarization. Plot (a) shows the accumulated counts of the successful responses between nodes sending messages without polarization, and plot (b) shows the same information during the phase of polarized communication (evens and odds have a disagreement). Each cell represents the number successful messages sent by user i to user j. Plot (c) shows the value of the relative influence of the top half of the nodes in respect to the bottom half during the simulation in which a polarization event is introduced at the dashed vertical line. Plot (d) shows the total amount of successful messages sent by each user to the lowest ranked influencer (before and after the introduction of polarization).
Figure 2How inoculation strategy 1 can reduce the polarization effect. The plot shows the changes in the values of the perceived influence that nodes use when deciding whether to propagate a message sent by another node in 3 phases of a discussion; the non-polarized discussion, the polarized discussion and the polarized discussion with the inoculation strategy 1 applied. A polarization event is introduced at the first dashed vertical line, and at the second vertical dashed line the inoculation strategy 1 is applied.
Figure 3How inoculation strategy 2 can reduce the polarization effect. The plot shows the changes in the values of the perceived influence of nodes during 3 phases of a discussion; non-polarized exchange, polarized exchange and the polarized exchange having inoculation strategy 2 applied. This decrease in the thrid phase shows the capability for this inoculation strategy to return the network to a discussion with a more uniform distribution of dissemination capabilities across the participants.