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Regresi Binomial Negatif Sifar-Terinflasi (ZINB)×Regresi Poisson dan Binomial Negatif×
BidangStatistikEkonometrik
KeluargaRegression modelRegression model
Tahun asal19941998
PengasasGreene (1994)Cameron & Trivedi (textbook treatment); Hilbe (negative binomial)
JenisCount regression (mixture model)Generalized linear model for count data
Sumber perintisGreene, W. H. (1994). Accounting for Excess Zeros and Sample Selection in Poisson and Negative Binomial Regression Models. NYU Working Paper. link ↗Cameron, A. C. & Trivedi, P. K. (1998). Regression Analysis of Count Data. Cambridge University Press. DOI ↗
AliasZINB, ZINB regression, zero-inflated negative binomial model, Sıfır-Şişirilmiş Negatif Binom Regresyonu (ZINB)count regression, log-linear count model, negative binomial regression, Poisson / Negatif Binom Regresyon
Berkaitan54
RingkasanZero-Inflated Negative Binomial regression is a count model, introduced by Greene (1994), that handles count data showing both an excess of zeros and overdispersion. It combines a binary inflation process that generates structural zeros with a negative binomial count process, making it one of the most widely used distributions for real-world count data.Poisson regression is a generalized linear model for count outcomes — events tallied as non-negative integers such as hospital admissions, accidents, or article counts. It models the log of the expected count as a linear function of the predictors, and is developed in the standard count-data treatment of Cameron and Trivedi (1998); when the counts are over-dispersed, the closely related negative binomial model (Hilbe, 2011) is preferred.
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ScholarGateBandingkan kaedah: Zero-Inflated Negative Binomial Regression · Poisson Regression. Dicapai 2026-06-17 daripada https://scholargate.app/ms/compare