In social network analysis, individuals are represented as nodes in a graph, social ties among them are represented as links, and the strength of the social ties can be expressed as link weights. However, in social network analyses where the strength of a social tie is expressed as a link weight, the link weight may be quantized to take only a few discrete values. In this paper, expressing a continuous value of social tie strength as a few discrete value is referred to as link weight quantization, and we study the effects of link weight quantization on centrality measures through simulations and experiments utilizing network generation models that generate synthetic social networks and real social network datasets. Our results show that (1)...
International audienceIdentifying influential nodes in social networks is a fundamental issue. Indee...
The supplementary information includes additional results on radius bias analysis, correlations betw...
This paper reports on a simulation study of social networks that investigated how network topology r...
Links play a significant role in the functioning of a complex network. The aim of this thesis is to ...
Importance of nodes and tie strength are necessary elements to characterize and analyze networks, a...
This chapter addresses two important issues in social network analysis that involve uncertainty. Fir...
Importance of nodes and tie strength are necessary elements to characterize and analyze networks, as...
Ties often have a strength naturally associated with them that differentiate them from each other. T...
Ties often have a strength naturally associated with them that differentiate them from each other. T...
We propose a non-linear relationship between two of the most important measures of centrality in a n...
In the area of network analysis, centrality metrics play an important role in defining the “most imp...
In the area of network analysis, centrality metrics play an important role in defining the “most imp...
Abstract—In this paper, we study the sensitivity of centrality metrics as a key metric of social net...
The position of a node in a social network, or node centrality, can be quantified in several ways. T...
International audienceIdentifying influential nodes in social networks is a fundamental issue. Indee...
International audienceIdentifying influential nodes in social networks is a fundamental issue. Indee...
The supplementary information includes additional results on radius bias analysis, correlations betw...
This paper reports on a simulation study of social networks that investigated how network topology r...
Links play a significant role in the functioning of a complex network. The aim of this thesis is to ...
Importance of nodes and tie strength are necessary elements to characterize and analyze networks, a...
This chapter addresses two important issues in social network analysis that involve uncertainty. Fir...
Importance of nodes and tie strength are necessary elements to characterize and analyze networks, as...
Ties often have a strength naturally associated with them that differentiate them from each other. T...
Ties often have a strength naturally associated with them that differentiate them from each other. T...
We propose a non-linear relationship between two of the most important measures of centrality in a n...
In the area of network analysis, centrality metrics play an important role in defining the “most imp...
In the area of network analysis, centrality metrics play an important role in defining the “most imp...
Abstract—In this paper, we study the sensitivity of centrality metrics as a key metric of social net...
The position of a node in a social network, or node centrality, can be quantified in several ways. T...
International audienceIdentifying influential nodes in social networks is a fundamental issue. Indee...
International audienceIdentifying influential nodes in social networks is a fundamental issue. Indee...
The supplementary information includes additional results on radius bias analysis, correlations betw...
This paper reports on a simulation study of social networks that investigated how network topology r...