Forecasting of Categorical Time Series Using a Regression Model

Helmut Pruscha, Axel Göttlein

Research output: Contribution to journalArticlepeer-review

3 Scopus citations

Abstract

This paper deals with time series of categorical or ordinal variables, which are combined with time varying covariates. The conditional expectations (probabilities) are modelled as a regression model in a GLM-type manner, its parameters are estimated using a (partial) likelihood-approach. Special attention is given to the multivariate and the cumulative logistic regression model, with a regression term defined by a recursive scheme. The main concern is directed at forecasts for such time series. Using an approximation formula for conditional expectations l-step predictors are developed. Bias and mean square errors are estimated by using expansion formulas and by employing Box-Jenkins as well as nonparametric methods. The procedures proposed are numerically applied to a data set of yearly forest health inventories.

Original languageEnglish
Pages (from-to)223-240
Number of pages18
JournalStochastics and Quality Control
Volume18
Issue number2
DOIs
StatePublished - 10 Oct 2003

Keywords

  • Categorical time series
  • cumulative regression models
  • forecast methods
  • forest inventory
  • generalized linear models
  • multivariate logistic regression

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