The proliferation of online communities has attracted much attention to modelling user behaviour in terms of social interaction, language adoption and contribution activity. Nevertheless, when applied to large-scale and cross-platform behavioural data, existing approaches generally suffer from expressiveness, scalability and generality issues. This paper proposes trans-dimensional von Mises-Fisher (TvMF) mixture models for L2 normalised behavioural data, which encapsulate: (1)a Bayesian framework for vMF mixtures that enables prior knowledge and information sharing among clusters, (2) an extended version of reversible jump MCMC algorithm that allows adaptivechanges in the number of clusters for vMF mixtures when the model parameters are upd...
Change point estimation in standard process observed over time is an important problem in literature...
Network data, particularly social network data, is widely collected in the context of interactions b...
A useful step in data analysis is clustering, in which observations are grouped together in a hopefu...
The proliferation of online communities has attracted much attention to modelling user behaviour in ...
The proliferation of online communities has attracted much attention to modelling user behaviour in ...
The proliferation of online communities has attracted much attention to modelling user behaviour in ...
This paper proposes a suite of models for cluster-ing high-dimensional data on a unit sphere based o...
The domain of data mining and machine learning has expanded rapidly in recent years to include both ...
We present a mixture model based approach for learn-ing individualized behavior models for the Web u...
International audienceWe present a dual-view mixture model to cluster users based on their features ...
International audienceEvolutionary clustering aims at capturing the temporal evolution of clusters. ...
International audienceEvolutionary clustering aims at capturing the temporal evolution of clusters. ...
© Springer International Publishing Switzerland 2015. Evolutionary clustering aims at capturing the ...
Finite mixtures of von Mises-Fisher distributions allow to apply model-based clustering methods to d...
Online learning of Hawkes processes has received increasing attention in the last couple of years es...
Change point estimation in standard process observed over time is an important problem in literature...
Network data, particularly social network data, is widely collected in the context of interactions b...
A useful step in data analysis is clustering, in which observations are grouped together in a hopefu...
The proliferation of online communities has attracted much attention to modelling user behaviour in ...
The proliferation of online communities has attracted much attention to modelling user behaviour in ...
The proliferation of online communities has attracted much attention to modelling user behaviour in ...
This paper proposes a suite of models for cluster-ing high-dimensional data on a unit sphere based o...
The domain of data mining and machine learning has expanded rapidly in recent years to include both ...
We present a mixture model based approach for learn-ing individualized behavior models for the Web u...
International audienceWe present a dual-view mixture model to cluster users based on their features ...
International audienceEvolutionary clustering aims at capturing the temporal evolution of clusters. ...
International audienceEvolutionary clustering aims at capturing the temporal evolution of clusters. ...
© Springer International Publishing Switzerland 2015. Evolutionary clustering aims at capturing the ...
Finite mixtures of von Mises-Fisher distributions allow to apply model-based clustering methods to d...
Online learning of Hawkes processes has received increasing attention in the last couple of years es...
Change point estimation in standard process observed over time is an important problem in literature...
Network data, particularly social network data, is widely collected in the context of interactions b...
A useful step in data analysis is clustering, in which observations are grouped together in a hopefu...