International audienceCommunity detection is a popular topic in network science field. In social network analysis, preference is often applied as an attribute for individuals' representation. In some cases, uncertain and imprecise preferences may appear in some cases. Moreover, conflicting preferences can arise from multiple sources. From a model for imperfect preferences we proposed earlier, we study the clustering quality in case of perfect preferences as well as imperfect ones based on weak orders (orders that are complete, reflexive and transitive). The model for uncertain preferences is based on the theory of belief functions with an appropriate dissimilarity measure when performing the clustering steps. To evaluate the quality of clus...
With ever-increasing available data, predicting individuals' preferences and helping them locate the...
Clustering is an effective means to reduce the scaling of large-scale group decision-making (LSGDM)....
We propose a computational model of social preference judgments that accounts for the degree of an a...
International audienceCommunity detection is a popular topic in network science field. In social net...
International audienceEvidential preference based on belief function theory has been proposed recent...
International audienceIn this paper, we focus on measuring the dissimilarity between preferences wit...
Social media makes it possible to involve a large group of people to express their opinions, but not...
© 2019 IEEE. When people express their opinions about a certain issue, they often give uncertain opi...
International audienceFacing an unknown situation, a person may not be able to firmly elicit his/her...
This thesis focuses on exploiting the dynamics and correlations of preferences over social networks ...
Today, especially in the digital world, we are asked about our preferences on many things. Modeling ...
International audienceGiven a set of pairwise comparisons, the classical ranking problem computes a ...
A paradigmatic problem in social choice theory deals with the aggregation of subjective preferences ...
With ever-increasing available data, predicting individuals ’ preferences and helping them locate th...
With ever-increasing available data, predicting individuals' preferences and helping them locate the...
Clustering is an effective means to reduce the scaling of large-scale group decision-making (LSGDM)....
We propose a computational model of social preference judgments that accounts for the degree of an a...
International audienceCommunity detection is a popular topic in network science field. In social net...
International audienceEvidential preference based on belief function theory has been proposed recent...
International audienceIn this paper, we focus on measuring the dissimilarity between preferences wit...
Social media makes it possible to involve a large group of people to express their opinions, but not...
© 2019 IEEE. When people express their opinions about a certain issue, they often give uncertain opi...
International audienceFacing an unknown situation, a person may not be able to firmly elicit his/her...
This thesis focuses on exploiting the dynamics and correlations of preferences over social networks ...
Today, especially in the digital world, we are asked about our preferences on many things. Modeling ...
International audienceGiven a set of pairwise comparisons, the classical ranking problem computes a ...
A paradigmatic problem in social choice theory deals with the aggregation of subjective preferences ...
With ever-increasing available data, predicting individuals ’ preferences and helping them locate th...
With ever-increasing available data, predicting individuals' preferences and helping them locate the...
Clustering is an effective means to reduce the scaling of large-scale group decision-making (LSGDM)....
We propose a computational model of social preference judgments that accounts for the degree of an a...