Does adjusted R^2 have any physical interpretation?

Hi David,

It has been stated many times that R^2 tells us the amount of variance in the dependent variable that is explained by the variance in the independent variable. Do the adjusted R^2 terms tell us anything about the actual regression or are they only used for comparison purposes?

Thanks,
Mike
 

David Harper CFA FRM

David Harper CFA FRM
Subscriber
Hi Mike,

I'm don't know for certain. First, it seems like FRM our econometric assignments have generally recommended adjusted R^2 as superior to R^2 in the multivariate regression due to the R^2 tendency to increase unconditionally with the addition of more independent vars. Stock & Watson say, "The adjusted R^2 is useful because it quantifies the extent to which the regressors account for, or explain, the variation in the dependent variable ..." I read this as a direct analogy between R^2 in univariate and adjusted R^2 in multivariate; i.e., % variance in the dependent explained by independents. In this sense, i think the adjusted R^2 very much means to "tell us something" about the actual regression ...

As the same time, I check my Peter Kennedy text (my go to source http://www.amazon.com/Guide-Econometrics-Peter-Kennedy/dp/1405182571) and, clearly, it seems technically complicated. I noted too, here (http://stackoverflow.com/questions/2870631/what-is-the-difference-between-multiple-r-squared-and-adjusted-r-squared-in-a-sin ) the comment that "it [adjusted R^2] does not have the simple summarizing interpretation that R2 has." ... I do notice that, unlike R^2, adjusted R^2 can go negative which seems to support the idea that it is more of an "adjustment" than a pure fit estimate.

So, my naive check of three references (I looked at Gujarati too) does NOT give me access to a clean direct physical interpretation of adjusted R^2; only what appears to be an "adjustment with the intent to give an approximate estimate" that is similar to R^2 in the univariate case.

I hope that helps a little, thanks,

David
 

Deepak Chitnis

Active Member
Subscriber
Hi @David Harper CFA FRM CIPM, just thing about adjusted R^2, We can also derive the Adjusted R^2=1−(1−R^2) N −1/N −k −1. In our practice exam I found some question that had R^2 and asked for adjusted R^2. We can use this formula for that also. Correct me if I am wrong. And what do you think about this formula?
Thanks a lot:)
 

Dr. Jayanthi Sankaran

Well-Known Member
Hi @Deepak Chitnis and @S666,

There are two interpretations that follow from your formula for Adjusted R-Square below:

Adjusted R-Square is computed using the formula 1-((1-R^2)*(N-1)/(N-k-1)).

(1) When the number of observations (N) is small and the number of predictors (k) is large, there will be a much greater difference between R-Square and adjusted R-Square (because the ratio of (N-1)/(N-k-1) will be much less than 1).

(2) By contrast, when the number of observations is very large compared to the number of predictors, the value of R-Square and adjusted R-Square will be much closer because the ratio of (N-1)/(N-k-1) will approach 1.

The adjusted R(square) does not necessarily increase when a new regressor is added, unlike the R(square). Also, adding a regressor has two opposite effects on the adjusted R (square). On the one hand, the adjusted R (square) increases. On the other hand, the factor (n-1)/(n - k -1) increases. Whether the adjusted R (square) increases or decreases depends on which of these two effects is stronger.

Thanks:)
Jayanthi
 
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