Login / Signup

Accurate estimation for extra-Poisson variability assuming random effect models.

Ricardo Puziol de OliveiraJorge Alberto Achcar
Published in: Journal of applied statistics (2020)
In this study, the components of extra-Poisson variability are estimated assuming random effect models under a Bayesian approach. A standard existing methodology to estimate extra-Poisson variability assumes a negative binomial distribution. The obtained results show that using the proposed random effect model it is possible to get more accurate estimates for the extra-Poisson variability components when compared to the use of a negative binomial distribution where it is possible to estimate only one component of extra-Poisson variability. Some illustrative examples are introduced considering real data sets.
Keyphrases
  • high resolution
  • electronic health record
  • mass spectrometry
  • neural network