Typically, full Bayesian estimation of correlated event rates can be computationally challenging since estimators are intractable. When estimation of event rates represents one activity within a larger modeling process, there is an incentive to develop more efficient inference than provided by a full Bayesian model. We develop a new subjective inference method for correlated event rates based on a Bayes linear Bayes model under the assumption that events are generated from a homogeneous Poisson process. To reduce the elicitation burden we introduce homogenization factors to the model and, as an alternative to a subjective prior, an empirical method using the method of moments is developed. Inference under the new method is compared against ...
<p>We develop correlated random measures, random measures where the atom weights can exhibit a flexi...
This book presents a systematic and comprehensive treatment of various prior processes that have bee...
In this chapter we discuss how Bayesian techniques can be used to estimate the Poisson model with ex...
Typically, full Bayesian estimation of correlated event rates can be computationally challenging sin...
Empirical Bayes offers a means of obtaining robust inference by pooling data on processes that have ...
Dependency between rates of occurrence of events can exist for a variety of reasons. For example, ma...
This thesis introduces new unsupervised machine learning algorithms for complex event data. Event da...
The standard model for the analysis of rates is the log-linear model where counts are assumed to fol...
Empirical Bayes provides one approach to estimating the frequency of rare events as a weighted avera...
A method for estimating the reliability of a new product based on a comparative analysis of observed...
The present paper describes the empirical Bayesian approach applied in the estimation of several sma...
In clinical and epidemiological studies, recurrent events occur frequently, such as such as repeated...
Poisson processes are used in various applications. In their homogeneous version, the intensity proc...
This article develops a set of tools for smoothing and prediction with dependent point event pattern...
Poisson processes are used in various application fields applications (public health biology, reliab...
<p>We develop correlated random measures, random measures where the atom weights can exhibit a flexi...
This book presents a systematic and comprehensive treatment of various prior processes that have bee...
In this chapter we discuss how Bayesian techniques can be used to estimate the Poisson model with ex...
Typically, full Bayesian estimation of correlated event rates can be computationally challenging sin...
Empirical Bayes offers a means of obtaining robust inference by pooling data on processes that have ...
Dependency between rates of occurrence of events can exist for a variety of reasons. For example, ma...
This thesis introduces new unsupervised machine learning algorithms for complex event data. Event da...
The standard model for the analysis of rates is the log-linear model where counts are assumed to fol...
Empirical Bayes provides one approach to estimating the frequency of rare events as a weighted avera...
A method for estimating the reliability of a new product based on a comparative analysis of observed...
The present paper describes the empirical Bayesian approach applied in the estimation of several sma...
In clinical and epidemiological studies, recurrent events occur frequently, such as such as repeated...
Poisson processes are used in various applications. In their homogeneous version, the intensity proc...
This article develops a set of tools for smoothing and prediction with dependent point event pattern...
Poisson processes are used in various application fields applications (public health biology, reliab...
<p>We develop correlated random measures, random measures where the atom weights can exhibit a flexi...
This book presents a systematic and comprehensive treatment of various prior processes that have bee...
In this chapter we discuss how Bayesian techniques can be used to estimate the Poisson model with ex...