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A non-linear integer-valued autoregressive model with zero-inflated data series.

Predrag M Popović1, Hassan S Bakouch2, Miroslav M Ristić3

  • 1Faculty of Civil Engineering and Architecture, University of Niš, Niš, Serbia.

Journal of Applied Statistics
|April 30, 2025
PubMed
Summary
This summary is machine-generated.

A novel non-linear stationary process models count time series using survival and innovation components. This flexible model addresses excess zeros and is validated with real-world data, demonstrating its adaptability.

Keywords:
62M10INAR(1) modelgeneralized zero-modified geometric thinning operatornon-linear modelsimulationstationaritytime series

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Area of Science:

  • Statistics
  • Time Series Analysis
  • Stochastic Processes

Background:

  • Count time series data often exhibit excess zeros, posing challenges for standard models.
  • Existing models may not adequately capture the complex dynamics of zero-inflated or zero-deflated count data.
  • A need exists for flexible models that can accommodate various zero patterns in count time series.

Purpose of the Study:

  • Introduce a new non-linear stationary process for count time series.
  • Develop a model capable of handling excess zeros (inflation and deflation).
  • Investigate parameter estimation methods for the proposed process.

Main Methods:

  • The proposed process integrates survival and innovation components.
  • The survival component utilizes a generalized zero-modified geometric thinning operator.
  • Innovation processes with various probability distributions are explored.
  • Conditional maximum likelihood and conditional least squares are used for parameter estimation.

Main Results:

  • The new process effectively models time series of counts, including those with excess zeros.
  • The model demonstrates flexibility in adjusting to observed zero inflation and deflation.
  • Parameter estimation methods are investigated and shown to be applicable.

Conclusions:

  • The introduced non-linear stationary process offers a robust framework for count time series analysis.
  • The model's adaptability to different zero patterns makes it suitable for diverse real-life applications.
  • The study provides practical insights into model fitting and parameter selection for count data.