A Bayesian approach for mode inference which works in two steps. First, a mixture distribution is fitted on the data using a sparse finite mixture (SFM) Markov chain Monte Carlo (MCMC) algorithm following Malsiner-Walli, Frühwirth-Schnatter and Grün (2016) <doi:10.1007/s11222-014-9500-2>). The number of mixture components does not have to be known; the size of the mixture is estimated endogenously through the SFM approach. Second, the modes of the estimated mixture at each MCMC draw are retrieved using algorithms specifically tailored for mode detection. These estimates are then used to construct posterior probabilities for the number of modes, their locations and uncertainties, providing a powerful tool for mode inference
iii Mixture distributions are typically used to model data in which each observation be-longs to one...
An important aspect of mixture modeling concerns the selection of the number of mixture components. ...
Finite mixture models are used in statistics and other disciplines, but inference for mixture models...
Abstract only:\ud \ud Today’s data analysts and modellers are in the luxurious position of being abl...
Abstract only: Today’s data analysts and modellers are in the luxurious position of being able to mo...
The purpose of this thesis is to develop efficient Bayesian methods to address multi-modality in pos...
Circular data are encountered in a variety of fields. A dataset on music listening behaviour through...
textabstractThis paper presents the R package MitISEM (mixture of t by importance sampling weighted ...
International audienceThis chapter surveys the most standard Monte Carlo methods available for simul...
This paper presents the R package MitISEM (mixture of t by importance sampling weighted expectation ...
This paper presents the R package MitISEM (mixture of t by importance sampling weighted expectation ...
This paper presents the R package MitISEM (mixture of t by importance sampling weighted expectation ...
This paper presents the R package MitISEM (mixture of t by importance sampling weighted expectation ...
This paper provides a Bayesian framework for testing the number of modes in a two-component Gaussian...
In reality many time series are non-linear and non-gaussian. They show the characters like flat stre...
iii Mixture distributions are typically used to model data in which each observation be-longs to one...
An important aspect of mixture modeling concerns the selection of the number of mixture components. ...
Finite mixture models are used in statistics and other disciplines, but inference for mixture models...
Abstract only:\ud \ud Today’s data analysts and modellers are in the luxurious position of being abl...
Abstract only: Today’s data analysts and modellers are in the luxurious position of being able to mo...
The purpose of this thesis is to develop efficient Bayesian methods to address multi-modality in pos...
Circular data are encountered in a variety of fields. A dataset on music listening behaviour through...
textabstractThis paper presents the R package MitISEM (mixture of t by importance sampling weighted ...
International audienceThis chapter surveys the most standard Monte Carlo methods available for simul...
This paper presents the R package MitISEM (mixture of t by importance sampling weighted expectation ...
This paper presents the R package MitISEM (mixture of t by importance sampling weighted expectation ...
This paper presents the R package MitISEM (mixture of t by importance sampling weighted expectation ...
This paper presents the R package MitISEM (mixture of t by importance sampling weighted expectation ...
This paper provides a Bayesian framework for testing the number of modes in a two-component Gaussian...
In reality many time series are non-linear and non-gaussian. They show the characters like flat stre...
iii Mixture distributions are typically used to model data in which each observation be-longs to one...
An important aspect of mixture modeling concerns the selection of the number of mixture components. ...
Finite mixture models are used in statistics and other disciplines, but inference for mixture models...