A new software package for the Julia language, CountTimeSeries.jl, is under review, which provides likelihood based methods for integer-valued time series. The package’s functionalities are showcased in a simulation study on finite sample properties of Maximum Likelihood (ML) estimation and three real-life data applications. First, the number of newly infected COVID-19 patients is predicted. Then, previous findings on the need for overdispersion and zero inflation are reviewed in an application on animal submissions in New Zealand. Further, information criteria are used for model selection to investigate patterns in corporate insolvencies in Rhineland-Palatinate. Theoretical background and implementation details are described, and complete ...
Models of count time series with denumerable states space with conditional probability distributios ...
International audienceTime series classification is a subfield of machine learning with numerous rea...
The growing prevalence of big and streaming data requires a new generation of tools. Data often has ...
TimeSeriesClustering is a Julia implementation of unsupervised learning methods for time series data...
The analysis of low integer-valued time series is an area of growing interest as time series of coun...
Count data appears in many research fields and exhibits certain features that make modeling difficul...
Integer-valued time series comprising count observations at regular time intervals can be observed i...
We review some regression models for the analysis of count time series. These models have been the f...
Temporal and spatiotemporal data form an inherent fabric of the society as we are faced with streams...
Integer-valued time series comprising count observations at regular time intervals can be observed i...
Time series analysis has been a popular research topic in the last few decades. In this thesis, we d...
This paper compares two alternative models for autocorrelated count time series. The first model can...
One of the major motivations for the analysis and modeling of time series data is the forecasting of...
A new class of integer time series models is proposed to capture the dynamic transmission of count p...
International audiencePrediction of seasonal epidemics have beenwidely treated in the medical litera...
Models of count time series with denumerable states space with conditional probability distributios ...
International audienceTime series classification is a subfield of machine learning with numerous rea...
The growing prevalence of big and streaming data requires a new generation of tools. Data often has ...
TimeSeriesClustering is a Julia implementation of unsupervised learning methods for time series data...
The analysis of low integer-valued time series is an area of growing interest as time series of coun...
Count data appears in many research fields and exhibits certain features that make modeling difficul...
Integer-valued time series comprising count observations at regular time intervals can be observed i...
We review some regression models for the analysis of count time series. These models have been the f...
Temporal and spatiotemporal data form an inherent fabric of the society as we are faced with streams...
Integer-valued time series comprising count observations at regular time intervals can be observed i...
Time series analysis has been a popular research topic in the last few decades. In this thesis, we d...
This paper compares two alternative models for autocorrelated count time series. The first model can...
One of the major motivations for the analysis and modeling of time series data is the forecasting of...
A new class of integer time series models is proposed to capture the dynamic transmission of count p...
International audiencePrediction of seasonal epidemics have beenwidely treated in the medical litera...
Models of count time series with denumerable states space with conditional probability distributios ...
International audienceTime series classification is a subfield of machine learning with numerous rea...
The growing prevalence of big and streaming data requires a new generation of tools. Data often has ...