The speed and extent of diffusion of behaviors in social networks depends on network structure and individual preferences. The contribution of the present study is twofold. First, we introduce weighted interactions between potential adopters that depend on the similarity in their preferences and moderate the strength of social reinforcement. The reason for the extension is the existence of a confirmation bias in the way agents treat information by prioritizing evidence conforming to their opinion. As a result, individuals become less likely to be influenced by peers with relatively different preferences, reducing the overall diffusion rate under clustered networks. Second, we enrich our analysis by also considering a scale free network topo...
This paper analyzes a model of social learning in a social network. Agents decide whether or not to ...
Precise user and item embedding learning is the key to building a successful recommender system. Tra...
their invaluable comments and suggestions. Wayne DeSarbo served as associate editor for this article...
Unidad de excelencia María de Maeztu MdM-2015-0552The speed and extent of diffusion of behaviors in ...
How do social networks affect the spread of behavior? A popular hypothesis states that networks with...
Thesis: S.M. in Management Research, Massachusetts Institute of Technology, Sloan School of Manageme...
The debate on diffusion in social networks has traditionally focused on the structure of the network...
Journal articleIn this paper we explore the effect that random social interactions have on the emerg...
This paper analyzes how social structure and social reinforcement affect the diffusion of an idea in...
We analyze a model of diffusion on social networks. Agents are connected according to an undirected ...
The recent availability of massive amounts of networked data generated by email, instant messaging, ...
We introduce homophily in a percolation model of word-of-mouth diffusion in social networks by reorg...
The diffusion of beliefs and behaviors is shaped by the network in which people are embedded. Our fo...
We develop a dynamic matched sample estimation algorithm to distinguish peer influence and homophily...
We develop a dynamic matched sample estimation algorithm to distinguish peer influence and homophily...
This paper analyzes a model of social learning in a social network. Agents decide whether or not to ...
Precise user and item embedding learning is the key to building a successful recommender system. Tra...
their invaluable comments and suggestions. Wayne DeSarbo served as associate editor for this article...
Unidad de excelencia María de Maeztu MdM-2015-0552The speed and extent of diffusion of behaviors in ...
How do social networks affect the spread of behavior? A popular hypothesis states that networks with...
Thesis: S.M. in Management Research, Massachusetts Institute of Technology, Sloan School of Manageme...
The debate on diffusion in social networks has traditionally focused on the structure of the network...
Journal articleIn this paper we explore the effect that random social interactions have on the emerg...
This paper analyzes how social structure and social reinforcement affect the diffusion of an idea in...
We analyze a model of diffusion on social networks. Agents are connected according to an undirected ...
The recent availability of massive amounts of networked data generated by email, instant messaging, ...
We introduce homophily in a percolation model of word-of-mouth diffusion in social networks by reorg...
The diffusion of beliefs and behaviors is shaped by the network in which people are embedded. Our fo...
We develop a dynamic matched sample estimation algorithm to distinguish peer influence and homophily...
We develop a dynamic matched sample estimation algorithm to distinguish peer influence and homophily...
This paper analyzes a model of social learning in a social network. Agents decide whether or not to ...
Precise user and item embedding learning is the key to building a successful recommender system. Tra...
their invaluable comments and suggestions. Wayne DeSarbo served as associate editor for this article...