We develop a dynamic matched sample estimation algorithm to distinguish peer influence and homophily effects on item adoption decisions in dynamic networks, with numerous items diffusing simultaneously. We infer preferences using a machine learning algorithm applied to previous adoption decisions, and we match agents using those inferred preferences. We show that ignoring previous adoption decisions leads to significantly overestimating the role of peer influence in the diffusion of information, mistakenly confounding influence-based contagion with diffusion driven by common preferences. Our matching-on-preferences algorithm with machine learning reduces the relative effect of peer influence on item adoption decisions in this network signif...
The speed and extent of diffusion of behaviors in social networks depends on network structure and i...
This paper analyzes a model of social learning in a social network. Agents decide whether or not to ...
Abstract Modeling influence diffusion in social networks is an important challenge. We investigate i...
We develop a dynamic matched sample estimation algorithm to distinguish peer influence and homophily...
Node characteristics and behaviors are often correlated with the structure of social networks over t...
It is widely believed that one's peers influence product adoption behaviors. This relationship has b...
their invaluable comments and suggestions. Wayne DeSarbo served as associate editor for this article...
We study the diffusion process in an online social network given the individual connections between ...
In on-line social networks, innovations in the presence of one or more influences disseminate throug...
Influence diffusion modelling, analysis and applications in the preference-aware context draw tremen...
Influence diffusion modelling, analysis and applications in the preference-aware context draw tremen...
textabstractWe analyze the effect of peer influence on the diffusion of an innovative network good. ...
Some behaviors, ideas or technologies spread and become persistent in society, whereas others vanish...
Abstract—Social influence and influence diffusion has been widely studied in online social networks....
We analyze a model of diffusion on social networks. Agents are connected according to an undirected...
The speed and extent of diffusion of behaviors in social networks depends on network structure and i...
This paper analyzes a model of social learning in a social network. Agents decide whether or not to ...
Abstract Modeling influence diffusion in social networks is an important challenge. We investigate i...
We develop a dynamic matched sample estimation algorithm to distinguish peer influence and homophily...
Node characteristics and behaviors are often correlated with the structure of social networks over t...
It is widely believed that one's peers influence product adoption behaviors. This relationship has b...
their invaluable comments and suggestions. Wayne DeSarbo served as associate editor for this article...
We study the diffusion process in an online social network given the individual connections between ...
In on-line social networks, innovations in the presence of one or more influences disseminate throug...
Influence diffusion modelling, analysis and applications in the preference-aware context draw tremen...
Influence diffusion modelling, analysis and applications in the preference-aware context draw tremen...
textabstractWe analyze the effect of peer influence on the diffusion of an innovative network good. ...
Some behaviors, ideas or technologies spread and become persistent in society, whereas others vanish...
Abstract—Social influence and influence diffusion has been widely studied in online social networks....
We analyze a model of diffusion on social networks. Agents are connected according to an undirected...
The speed and extent of diffusion of behaviors in social networks depends on network structure and i...
This paper analyzes a model of social learning in a social network. Agents decide whether or not to ...
Abstract Modeling influence diffusion in social networks is an important challenge. We investigate i...