When sensors that count events are unreliable, the data sets that result cannot be trusted. We address this common problem by developing practical Bayesian estimators for a partially observable Poisson process (POPP). Unlike Bayesian estimation for a fully observable Poisson process (FOPP) this is non-trivial, since there is no conjugate density for a POPP and the posterior has a number of elements that grow exponentially in the number of observed intervals. We present two tractable approximations, which we combine in a switching filter. This switching filter enables efficient and accurate estimation of the posterior. We perform a detailed empirical analysis, using both simulated and real-world data
We introduce a model where the rate of an inhomogeneous Poisson process is modified by a Chinese res...
This thesis introduces new unsupervised machine learning algorithms for complex event data. Event da...
We develop a sequential data assimilation algorithm for count data modelled by a doubly stochastic P...
When sensors that count events are unreliable, the data sets that result cannot be trusted. We addre...
Poisson processes are used in various application fields applications (public health biology, reliab...
Poisson processes are used in various applications. In their homogeneous version, the intensity proc...
Poisson processes are used in various application fields applications (public health biology, reliab...
Poisson processes are used in various application fields applications (public health biology, reliab...
This thesis develops practical Bayesian estimators and exploration methods for count data collected ...
We study the problem of non-parametric Bayesian estimation of the intensity function of a Poisson po...
We study the problem of non-parametric Bayesian estimation of the intensity function of a Poisson po...
Time series involving count data are present in a wide variety of applications. In many application...
Inhomogeneous Poisson point processes are widely used models of event occurrences. We address \emph{...
INGARCH models for time series of counts arising, e.g., in epidemiology or finance assume the observ...
Suppose that a compound Poisson process is observed discretely in time and assume that its jump dist...
We introduce a model where the rate of an inhomogeneous Poisson process is modified by a Chinese res...
This thesis introduces new unsupervised machine learning algorithms for complex event data. Event da...
We develop a sequential data assimilation algorithm for count data modelled by a doubly stochastic P...
When sensors that count events are unreliable, the data sets that result cannot be trusted. We addre...
Poisson processes are used in various application fields applications (public health biology, reliab...
Poisson processes are used in various applications. In their homogeneous version, the intensity proc...
Poisson processes are used in various application fields applications (public health biology, reliab...
Poisson processes are used in various application fields applications (public health biology, reliab...
This thesis develops practical Bayesian estimators and exploration methods for count data collected ...
We study the problem of non-parametric Bayesian estimation of the intensity function of a Poisson po...
We study the problem of non-parametric Bayesian estimation of the intensity function of a Poisson po...
Time series involving count data are present in a wide variety of applications. In many application...
Inhomogeneous Poisson point processes are widely used models of event occurrences. We address \emph{...
INGARCH models for time series of counts arising, e.g., in epidemiology or finance assume the observ...
Suppose that a compound Poisson process is observed discretely in time and assume that its jump dist...
We introduce a model where the rate of an inhomogeneous Poisson process is modified by a Chinese res...
This thesis introduces new unsupervised machine learning algorithms for complex event data. Event da...
We develop a sequential data assimilation algorithm for count data modelled by a doubly stochastic P...