| Literature DB >> 29266124 |
Marco Cremonini1, Francesca Casamassima2.
Abstract
BACKGROUND: This work is aimed at studying realistic social control strategies for social networks based on the introduction of random information into the state of selected driver agents. Deliberately exposing selected agents to random information is a technique already experimented in recommender systems or search engines, and represents one of the few options for influencing the behavior of a social context that could be accepted as ethical, could be fully disclosed to members, and does not involve the use of force or of deception.Entities:
Keywords: Adaptive networks; Controllability; Metrics; Random information; Social network
Year: 2017 PMID: 29266124 PMCID: PMC5732623 DOI: 10.1186/s40649-017-0046-2
Source DB: PubMed Journal: Comput Soc Netw ISSN: 2197-4314
Parameters for the model instances
| Parameters shared by all instances | |
| Total number of topics in the system: | |
| Max. number of topics per agent at setup: | |
| Max. number of time steps (max #ticks): | |
| Number of new random topics per driver agent (% over | |
| Time interval of new random topic insertion (in #ticks): 1000 | |
| Network sizes | |
| Number of agents: | |
| High-degree agent selection | |
| Number of driver agents (% over | |
| Low-degree agent selection | |
| Number of driver agents (% over |
Fig. 1Network results for the selection of high- or low-degree driver agents. Dynamic Average Degree and Clustering Coefficient simulation results for N = [100, 500, 1000]. Label C0 represents the results of the natural system dynamics with no addition of random topics. 1% HIGH and 10% HIGH labels represent the results of, respectively, 1 and 10% of the high-degree nodes. 50% LOW and 70% LOW labels represent the results of, respectively, 50 and 70% of the low-degree nodes. The x-axis represents the time steps as ticks of the simulation; the y-axis represents the average degree (left) and the clustering coefficient (right)
Fig. 2Diffusion results for the selection of high- or low-degree driver agents. Average Knowledge (AK) and Knowledge Diffusion (KD) simulation results for N = [100, 500, 1000]. Label C0 represents the results of the natural system dynamics with no addition of random topics. 1% HIGH and 10% HIGH labels the represent results of, respectively, 1% and 10% of the high-degree nodes. 50% LOW and 70% LOW labels represent the results of, respectively, 50% and 70% of the low-degree nodes. The x-axis represents the time steps as ticks of the simulation; the y-axis represents the values of AK and KD, which are always in the ranges of [0,100] for these tests