Hi,
I'm trying to grasp the basic assumptions behind panel data regression models in order to understand which assumptions I have to check for my model. Does the following table (based very roughly on Woolridge, 2013) capture the essential assumptions correctly. I do understand that the assumptions are formulated not very mathematically, but I'm looking more for a high level overview as opposed to mathematical definitions.
Thanks a lot for your help in advance!
I'm trying to grasp the basic assumptions behind panel data regression models in order to understand which assumptions I have to check for my model. Does the following table (based very roughly on Woolridge, 2013) capture the essential assumptions correctly. I do understand that the assumptions are formulated not very mathematically, but I'm looking more for a high level overview as opposed to mathematical definitions.
OLS cross-sectional | OLS time series | FE | RE |
Linearity in parameters | Linearity in parameters | Linearity in parameters | Linearity in parameters |
Random sampling | Random sampling | Random sampling | |
No perfect collinearity | No perfect collinearity | No perfect collinearity | No perfect collinearity |
Zero conditional mean | Zero conditional mean | Zero conditional mean | Zero conditional mean |
Homoskedasticity | Homoskedasticity | Homoskedasticity | Homoskedasticity |
No autocorrelation | No autocorrelation | No autocorrelation | |
Normality | Normality | ||
Independent variables change over time | |||
Expected value and variance of unobserved effects uncorrelated with independent variables |
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