Dear community,
I am conducting an analysis where my dependent variable is of an ordinal nature. Since my sample is a panel and consists of observations from multiple industries, countries, and size classes, I was confident that including some fixed effects would capture unobserved heterogeneity. However, now I came across the Incidental Parameters Problems, saying that incidental parameters are inconsistently estimated in a ML panel estimation, as N → ∞, since only T observations are used to estimate each parameter (Cameron & Trivedi, 2005).
So far so good, after reading myself around the standard literature, I could not find anything helpful but that econometricians should be cautious using fixed effects in a ML panel estimation. For, example, Lancaster (2000) also states that it is remarkable that after 50 years that problem got published by Neymann and Scott (1948), there is still no solution (p. 409).
Does this mean, that one cannot run a Non-linear model with fixed effects? What should one do instead? I have seen at least a hundreds of research papers that made use of logic or profit models with fixed effects and were not even mentioning this problem. Can anybody suggest a solution or does have any ideas how to circumvent the issue?
Thanks in advance!
Carsten
I am conducting an analysis where my dependent variable is of an ordinal nature. Since my sample is a panel and consists of observations from multiple industries, countries, and size classes, I was confident that including some fixed effects would capture unobserved heterogeneity. However, now I came across the Incidental Parameters Problems, saying that incidental parameters are inconsistently estimated in a ML panel estimation, as N → ∞, since only T observations are used to estimate each parameter (Cameron & Trivedi, 2005).
So far so good, after reading myself around the standard literature, I could not find anything helpful but that econometricians should be cautious using fixed effects in a ML panel estimation. For, example, Lancaster (2000) also states that it is remarkable that after 50 years that problem got published by Neymann and Scott (1948), there is still no solution (p. 409).
Does this mean, that one cannot run a Non-linear model with fixed effects? What should one do instead? I have seen at least a hundreds of research papers that made use of logic or profit models with fixed effects and were not even mentioning this problem. Can anybody suggest a solution or does have any ideas how to circumvent the issue?
Thanks in advance!
Carsten
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