This work introduces a Bayesian approach to detecting multiple unknown changepoints over time in the inhomogeneous intensity of a spatio-temporal point process with spatial and temporal dependence within segments. We propose a new method for detecting changes by fitting a spatio-temporal log-Gaussian Cox process model using the computational efficiency and flexibility of integrated nested Laplace approximation, and by studying the posterior distribution of the potential changepoint positions. In this paper, the context of the problem and the research questions are introduced, then the methodology is presented and discussed in detail. A simulation study assesses the validity and properties of the proposed methods. Lastly, questions are addre...
A spatial marked point process describes the locations of randomly distributed events in a region, w...
summary:The paper deals with Cox point processes in time and space with Lévy based driving intensity...
International audienceWe describe a new multiple change-point detection technique based on segmentin...
This work introduces a Bayesian approach to detecting multiple unknown changepoints over time in the...
This work introduces a Bayesian approach for detecting multiple unknown change points over time in t...
This work introduces a Bayesian approach for detecting multiple unknown change points over time in t...
Changepoint analysis is a well established area of statistical research, but in the context of spati...
This work presents advanced computational aspects of a new method for changepoint detection on spati...
This work presents an application of a new method for changepoint detection on spatio-temporal point...
Change point problems are referred to detect heterogeneity in temporal or spatial data. They have a...
In this work, we first present a flexible hierarchical Bayesian model and develop a comprehensive Ba...
We combine Bayesian online change point detection with Gaussian processes to create a nonparametric ...
Abstract We consider the problem of detecting change points (structural changes) in long sequences o...
Process monitoring and control requires detection of structural changes in a data stream in real tim...
A spatial marked point process describes the locations of randomly distributed events in a region, w...
summary:The paper deals with Cox point processes in time and space with Lévy based driving intensity...
International audienceWe describe a new multiple change-point detection technique based on segmentin...
This work introduces a Bayesian approach to detecting multiple unknown changepoints over time in the...
This work introduces a Bayesian approach for detecting multiple unknown change points over time in t...
This work introduces a Bayesian approach for detecting multiple unknown change points over time in t...
Changepoint analysis is a well established area of statistical research, but in the context of spati...
This work presents advanced computational aspects of a new method for changepoint detection on spati...
This work presents an application of a new method for changepoint detection on spatio-temporal point...
Change point problems are referred to detect heterogeneity in temporal or spatial data. They have a...
In this work, we first present a flexible hierarchical Bayesian model and develop a comprehensive Ba...
We combine Bayesian online change point detection with Gaussian processes to create a nonparametric ...
Abstract We consider the problem of detecting change points (structural changes) in long sequences o...
Process monitoring and control requires detection of structural changes in a data stream in real tim...
A spatial marked point process describes the locations of randomly distributed events in a region, w...
summary:The paper deals with Cox point processes in time and space with Lévy based driving intensity...
International audienceWe describe a new multiple change-point detection technique based on segmentin...