In this publication, we combine two Bayesian nonparametric models: the Gaussian Process (GP) and the Dirichlet Process (DP). Our innovation in the GP model is to introduce a variation on the GP prior which enables us to model structured time-series data, i.e., data containing groups where we wish to model inter- and intra-group variability. Our innovation in the DP model is an implementation of a new fast collapsed variational inference procedure which enables us to optimize our variational approximation significantly faster than standard VB approaches. In a biological time series application we show how our model better captures salient features of the data, leading to better consistency with existing biological classifications, while the ...
Prior distributions play a crucial role in Bayesian approaches to clustering. Two commonly-used prio...
Multiple time series data may exhibit clustering over time and the clustering effect may change acro...
Prior distributions play a crucial role in Bayesian approaches to clustering. Two commonly-used prio...
In this publication, we combine two Bayesian nonparametric models: the Gaussian Process (GP) and the...
Nonparametric Bayesian Models currently suffer from a lack of efficient infer-ence algorithms. This ...
The availability of complex-structured data has sparked new research directions in statistics and ma...
The analysis of time series data is important in fields as disparate as the social sciences, biology...
This body of work develops new Bayesian nonparametric (BNP) models for estimating causal effects wit...
Neyman-Scott processes (NSPs) are point process models that generate clusters of points in time or s...
This body of work develops new Bayesian nonparametric (BNP) models for estimating causal effects wit...
Time series data may exhibit clustering over time and, in a multiple time series context, the clust...
We expand a framework for Bayesian variable selection for Gaussian process (GP) models by employing ...
The Dirichlet Process (DP) mixture model has become a popular choice for model-based clustering, lar...
Temporal data modeling plays a vital role in various research including finance, environmental scien...
The Dirichlet Process (DP) mixture model has become a popular choice for model-based clustering, lar...
Prior distributions play a crucial role in Bayesian approaches to clustering. Two commonly-used prio...
Multiple time series data may exhibit clustering over time and the clustering effect may change acro...
Prior distributions play a crucial role in Bayesian approaches to clustering. Two commonly-used prio...
In this publication, we combine two Bayesian nonparametric models: the Gaussian Process (GP) and the...
Nonparametric Bayesian Models currently suffer from a lack of efficient infer-ence algorithms. This ...
The availability of complex-structured data has sparked new research directions in statistics and ma...
The analysis of time series data is important in fields as disparate as the social sciences, biology...
This body of work develops new Bayesian nonparametric (BNP) models for estimating causal effects wit...
Neyman-Scott processes (NSPs) are point process models that generate clusters of points in time or s...
This body of work develops new Bayesian nonparametric (BNP) models for estimating causal effects wit...
Time series data may exhibit clustering over time and, in a multiple time series context, the clust...
We expand a framework for Bayesian variable selection for Gaussian process (GP) models by employing ...
The Dirichlet Process (DP) mixture model has become a popular choice for model-based clustering, lar...
Temporal data modeling plays a vital role in various research including finance, environmental scien...
The Dirichlet Process (DP) mixture model has become a popular choice for model-based clustering, lar...
Prior distributions play a crucial role in Bayesian approaches to clustering. Two commonly-used prio...
Multiple time series data may exhibit clustering over time and the clustering effect may change acro...
Prior distributions play a crucial role in Bayesian approaches to clustering. Two commonly-used prio...