Greetings,
This is my first post to this community. FYI I am a master student in Finance working on my thesis.
I am investigating the effect of board characteristics on risk-taking for the banking industry. I have an international sample on approx 200 banks across 46 countries with data from 2002-2016 with varying degrees data available for each bank with an average of approx. 8.5 years of data per bank available. Needless to say, I am using (unbalanced) panel data analysis.
The data I have collected can be grouped the following way:
A: Proxies for bank risk (Dependent variables) (I am planning to create 4 models that are identical but with different proxies for risk)
B: Board Characteristics data (e.g., board size)
C: Bank level controls
D: Country level controls
Now I was wondering which estimator to use? It appears it would come down between Random Effects vs Fixed Effects estimators.
I've run a Hausman test which rejects the null hypothesis which would indicate that I should use the FE model. But, two papers analyzing very similar data to mine with a similar research question use a random effects model with the following rationale:
Quote from paper by Pathan (2009) on a very similar topic:
Now I do not have time invariant effects so the first reasoning should not be a problem for. But, I have obviously similar data with not so strong within panel (bank) variation for my explanatory variables so the second point would also be a problem form. The third and fourth problem should be similar for me as well.
I was just wondering what your thoughts are on this? I could really use some expert advise.
And another question, should I also include country dummies? I have already included several country control variables (e.g. GDP per capita, real interest rate etc) is it okay to include both?
Kind regards,
Niels
This is my first post to this community. FYI I am a master student in Finance working on my thesis.
I am investigating the effect of board characteristics on risk-taking for the banking industry. I have an international sample on approx 200 banks across 46 countries with data from 2002-2016 with varying degrees data available for each bank with an average of approx. 8.5 years of data per bank available. Needless to say, I am using (unbalanced) panel data analysis.
The data I have collected can be grouped the following way:
A: Proxies for bank risk (Dependent variables) (I am planning to create 4 models that are identical but with different proxies for risk)
B: Board Characteristics data (e.g., board size)
C: Bank level controls
D: Country level controls
Now I was wondering which estimator to use? It appears it would come down between Random Effects vs Fixed Effects estimators.
I've run a Hausman test which rejects the null hypothesis which would indicate that I should use the FE model. But, two papers analyzing very similar data to mine with a similar research question use a random effects model with the following rationale:
Quote from paper by Pathan (2009) on a very similar topic:
The primary estimation method for Eq. (2) is generalized least
square (GLS) random effect (RE) technique following Baltagi and
Wu (1999) procedure. This technique is robust to first-order autoregressive
(AR(1)) disturbances (if any) within unbalanced-panels
and cross-sectional correlation and/or heteroskedasticity across
panels. In the presence of unobserved bank fixed-effect, panel
‘Fixed-Effect’ (FE) estimation is commonly suggested (see Wooldridge,
2002, pp. 265–291, for details on FE estimation). However,
such FE estimation is not suitable for this study for several reasons.
First, time-invariant variable like GINDEX cannot be estimated
with FE regression as it would be absorbed or wiped out in ‘within
transformation’ or ‘time-demeaning’ process of the variables in FE.
Second, FE estimation requires significant within panel (bank) variation
of the variable values to produce consistent and efficient
estimates. When the important variables on the right-hand side
do not vary much over time, like the board structure variables in
this paper, the FE estimates would be imprecise (Wooldridge,
2002, p. 286).6 Third, FE estimates may aggravate the problem of
multicollinearity if solved with least squares dummy variables (Baltagi,
2005). Finally, for large ‘N’ (i.e. 212) and fixed small ‘T’ (i.e. 8),
which is the case with this study’s panel data set (observations on
212 BHCs over 8 years) FE estimation is inconsistent (Baltagi,
2005, p. 13). Furthermore, in case of a large N, FE estimation would
lead to an enormous loss of degrees of freedom (Baltagi, 2005, p. 14).
Thus, an alternative to FE, i.e. GLS RE is proposed here.
square (GLS) random effect (RE) technique following Baltagi and
Wu (1999) procedure. This technique is robust to first-order autoregressive
(AR(1)) disturbances (if any) within unbalanced-panels
and cross-sectional correlation and/or heteroskedasticity across
panels. In the presence of unobserved bank fixed-effect, panel
‘Fixed-Effect’ (FE) estimation is commonly suggested (see Wooldridge,
2002, pp. 265–291, for details on FE estimation). However,
such FE estimation is not suitable for this study for several reasons.
First, time-invariant variable like GINDEX cannot be estimated
with FE regression as it would be absorbed or wiped out in ‘within
transformation’ or ‘time-demeaning’ process of the variables in FE.
Second, FE estimation requires significant within panel (bank) variation
of the variable values to produce consistent and efficient
estimates. When the important variables on the right-hand side
do not vary much over time, like the board structure variables in
this paper, the FE estimates would be imprecise (Wooldridge,
2002, p. 286).6 Third, FE estimates may aggravate the problem of
multicollinearity if solved with least squares dummy variables (Baltagi,
2005). Finally, for large ‘N’ (i.e. 212) and fixed small ‘T’ (i.e. 8),
which is the case with this study’s panel data set (observations on
212 BHCs over 8 years) FE estimation is inconsistent (Baltagi,
2005, p. 13). Furthermore, in case of a large N, FE estimation would
lead to an enormous loss of degrees of freedom (Baltagi, 2005, p. 14).
Thus, an alternative to FE, i.e. GLS RE is proposed here.
I was just wondering what your thoughts are on this? I could really use some expert advise.
And another question, should I also include country dummies? I have already included several country control variables (e.g. GDP per capita, real interest rate etc) is it okay to include both?
Kind regards,
Niels

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