We develop a Bayesian hierarchical model to identify communities of time series. Fitting the model provides an end-to-end community detection algorithm that does not extract information as a sequence of point estimates but propagates uncertainties from the raw data to the community labels. Our approach naturally supports multiscale community detection and the selection of an optimal scale using model comparison. We study the properties of the algorithm using synthetic data and apply it to daily returns of constituents of the S&P100 index and climate data from U.S. cities.</p
Social networks usually display a hierarchy of communities and it is the task of community detection...
AbstractTime series clustering is a research topic of practical importance in temporal data mining. ...
In recent years, a massive expansion in the amount of available network data in fields such as socia...
We develop a Bayesian hierarchical model to identify communities of time series. Fitting the model p...
We develop a Bayesian hierarchical model to identify communities of time series. Fitting the model p...
In recent years, there has been a surge of interest in community detection algorithms for complex ne...
In recent years, there has been a surge of interest in community detection algorithms for complex ne...
We propose an efficient Bayesian nonparametric model for discovering hierar-chical community structu...
Abstract- Community structure in networks has been investigated from many view-points, usually with ...
Networks have been widely used to describe interactions among objects in diverse fields. Given the i...
The investigation of community structure in networks is a task of great importance in many disciplin...
The class of Bayesian stochastic blockmodels has become a popular approach for modeling and predicti...
International audienceMany complex systems composed of interacting objects like social networks or t...
This dissertation has its main focus on the development of social network community detection algori...
Given an underlying graph, we consider the following dynamics: Initially, each node locally chooses ...
Social networks usually display a hierarchy of communities and it is the task of community detection...
AbstractTime series clustering is a research topic of practical importance in temporal data mining. ...
In recent years, a massive expansion in the amount of available network data in fields such as socia...
We develop a Bayesian hierarchical model to identify communities of time series. Fitting the model p...
We develop a Bayesian hierarchical model to identify communities of time series. Fitting the model p...
In recent years, there has been a surge of interest in community detection algorithms for complex ne...
In recent years, there has been a surge of interest in community detection algorithms for complex ne...
We propose an efficient Bayesian nonparametric model for discovering hierar-chical community structu...
Abstract- Community structure in networks has been investigated from many view-points, usually with ...
Networks have been widely used to describe interactions among objects in diverse fields. Given the i...
The investigation of community structure in networks is a task of great importance in many disciplin...
The class of Bayesian stochastic blockmodels has become a popular approach for modeling and predicti...
International audienceMany complex systems composed of interacting objects like social networks or t...
This dissertation has its main focus on the development of social network community detection algori...
Given an underlying graph, we consider the following dynamics: Initially, each node locally chooses ...
Social networks usually display a hierarchy of communities and it is the task of community detection...
AbstractTime series clustering is a research topic of practical importance in temporal data mining. ...
In recent years, a massive expansion in the amount of available network data in fields such as socia...