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Individual and Time Effects in Nonlinear Panel Models with Large N, T

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 Added by Martin Weidner
 Publication date 2013
and research's language is English




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We derive fixed effects estimators of parameters and average partial effects in (possibly dynamic) nonlinear panel data models with individual and time effects. They cover logit, probit, ordered probit, Poisson and Tobit models that are important for many empirical applications in micro and macroeconomics. Our estimators use analytical and jackknife bias corrections to deal with the incidental parameter problem, and are asymptotically unbiased under asymptotic sequences where $N/T$ converges to a constant. We develop inference methods and show that they perform well in numerical examples.



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179 - Takuya Ishihara 2020
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