Title of article :
The Emotional Promulgation of Social Norms in Social Networks Based on Structural Properties
Author/Authors :
Sajadi, Hadi Department of Computer Engineering - Sharif University of Technology Tehran, Iran , Habibi, Jafar Department of Computer Engineering - Sharif University of Technology Tehran, Iran , Fazli, Mohammad Amin Department of Computer Engineering - Sharif University of Technology Tehran, Iran
Abstract :
Social norms play an important role in regulating the behavior of societies. They are behavioral standards
that are considered acceptable in a group or society and violating them will result in sanction to violator. Both
governments and various cultural communities use this social component to solve various problems in society. The use
of norms leads to a large reduction in community spending to control harmful behaviors. Social norms have two
important aspects of promulgating and sanctioning. They are promulgated by activists in the community and, after
creation, are endorsed with a sanction. Norms can be used to promote a variety of different behaviors. Online social
networks have established a new and influential platform for promulgating social norms. We first redefined the
Rescorla-Wagner conditional learning model in the context of social norms with the help of a norm’s intrinsic
properties, and extract the main coefficients in the Rescorla-Wagner model related to it. Based on this model, we extract
a network structure related parameter (i.e. clustering coefficient) for any individual in the social network to promulgate
the norm with the conditional learning method. In this paper, by using the intrinsic properties of norms, we use and
tune the Rescorla-Wagner conditioning model in order to obtain a new model for social norm promulgation. Based on
this, we define criteria for the amount of effort required to promulgate norms in social networks. We show that there is
negative correlation between the amount of effort required by each node to promulgate a norm and the clustering
coefficient of that node. This result can be used to devise effective algorithms for social norms evolution.
Keywords :
Rescorla-Wagner , clustering coefficient , classical conditioning , social norm , social network
Journal title :
International Journal of Information and Communication Technology Research