Non-stationary count time series characterized by features such as abrupt changes and fluctuations about the trend arise in many scientific domains including biophysics, ecology, energy, epidemiology, and social science domains. Current approaches for integer-valued time series lack the flexibility to capture local transient features while more flexible models for continuous data types are inadequate for universal applications to integer-valued responses such as settings with small counts. We present a modeling framework, the negative binomial Bayesian trend filter (NB-BTF), that offers an adaptive model-based solution to capturing multiscale features with valid integer-valued inference for trend filtering. The framework is a hierarchical B...
We introduce new Bayesian methodology for modeling functional and time series data. While broadly ap...
It is increasingly being realised that many real world time series are not stationary and exhibit ev...
We analyze trend elimination methods and business cycle estimation by data filtering of the type intr...
We introduce a new approach for decoupling trends (drift) and changepoints (shifts) in time series. ...
Estimating boundary curves has many applications such as economics, climate science, and medicine. B...
Quantiles are useful characteristics of random variables that can provide substantial information on...
155 pagesThis work explores modeling and forecasting of time series data using a Bayesian state-spac...
A new first-order integer-valued moving average, INMA(1), model based on the negative binomial thinn...
A new first-order integer-valued moving average, INMA(1), model based on the negative binomial thin...
This thesis aims to develop a series of nonlinear time series models for analysing count data, espec...
Non-Gaussian dynamic models are proposed to analyse time series of counts. Three models are proposed...
This paper extends recent asymptotic theory developed for the Hodrick Prescott (HP) filter and boost...
Dynamic Linear Models (DLMs) are commonly employed for time series analysis due to their versatile s...
It is common to define a change in health status or in a disease state on the basis of a sustained r...
We develop and exemplify application of new classes of dynamic models for time series of nonnegative...
We introduce new Bayesian methodology for modeling functional and time series data. While broadly ap...
It is increasingly being realised that many real world time series are not stationary and exhibit ev...
We analyze trend elimination methods and business cycle estimation by data filtering of the type intr...
We introduce a new approach for decoupling trends (drift) and changepoints (shifts) in time series. ...
Estimating boundary curves has many applications such as economics, climate science, and medicine. B...
Quantiles are useful characteristics of random variables that can provide substantial information on...
155 pagesThis work explores modeling and forecasting of time series data using a Bayesian state-spac...
A new first-order integer-valued moving average, INMA(1), model based on the negative binomial thinn...
A new first-order integer-valued moving average, INMA(1), model based on the negative binomial thin...
This thesis aims to develop a series of nonlinear time series models for analysing count data, espec...
Non-Gaussian dynamic models are proposed to analyse time series of counts. Three models are proposed...
This paper extends recent asymptotic theory developed for the Hodrick Prescott (HP) filter and boost...
Dynamic Linear Models (DLMs) are commonly employed for time series analysis due to their versatile s...
It is common to define a change in health status or in a disease state on the basis of a sustained r...
We develop and exemplify application of new classes of dynamic models for time series of nonnegative...
We introduce new Bayesian methodology for modeling functional and time series data. While broadly ap...
It is increasingly being realised that many real world time series are not stationary and exhibit ev...
We analyze trend elimination methods and business cycle estimation by data filtering of the type intr...