Dear fellow Stata users:
I am working on a paper using two instrumental variables (IVs) to identify my explanatory variables. However, I have been informed that my IVs might be weakly correlated, which could affect the reliability of the p-values (Hansen J test) supporting the exogeneity of the instruments. Specifically, the concern raised in the report is that the correlation between the IVs could lead to inflated p-values in the over-identification test.
As I understand it, the argument is that we are testing whether IV1 and IV2 are correlated with the error term in the structural equation. If the IVs are correlated with each other, the correlations between IV1 and the error term, and IV2 and the error term, may provide redundant information, leading to less power in the test and thus a higher p-value.
Since I am more focused on applied work, I am not entirely sure about the technical details of this issue. I would appreciate any guidance on how to address this concern in my paper. Moreover, I believe that in many papers using the IV approach with multiple instruments, some degree of correlation between instruments is common. Could anyone provide more insights into this, or point me toward relevant papers that discuss this issue?
Thank you so much for your help,
Alex
I am working on a paper using two instrumental variables (IVs) to identify my explanatory variables. However, I have been informed that my IVs might be weakly correlated, which could affect the reliability of the p-values (Hansen J test) supporting the exogeneity of the instruments. Specifically, the concern raised in the report is that the correlation between the IVs could lead to inflated p-values in the over-identification test.
As I understand it, the argument is that we are testing whether IV1 and IV2 are correlated with the error term in the structural equation. If the IVs are correlated with each other, the correlations between IV1 and the error term, and IV2 and the error term, may provide redundant information, leading to less power in the test and thus a higher p-value.
Since I am more focused on applied work, I am not entirely sure about the technical details of this issue. I would appreciate any guidance on how to address this concern in my paper. Moreover, I believe that in many papers using the IV approach with multiple instruments, some degree of correlation between instruments is common. Could anyone provide more insights into this, or point me toward relevant papers that discuss this issue?
Thank you so much for your help,
Alex
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