I have noticed different authors using different forms of IMR, i.e., $\frac{f(x)}{F(-x)}$ or $\frac{f}{(1-F(x))}$ depending on whether they are modeling selection or non-selection in the first-stage model. I did some simulations in my case where a lot of observations were censored at $0$. In different runs, I tried $\frac{f(x)}{F(-x)}$, or $\frac{f}{(1-F(x))}$, $x\beta$, and the probit score, but to my surprise, the coefficient on my variable of interest hardly changed even though magnitude and signs of IMR changed drastically.
My questions go like this:
Is it true to say irrespective of the formula applied, $\beta_{k}$ on variable of interest adjust accordingly? I mean, as long as we are factoring selection bias, $\beta_{k}$ on variable of interest is unbiased and consistent.
How do I interpret IMR? I have observed that $\frac{f(x)}{F(-x)}$ is directly proportional to $x\beta$ (and hence the probit score), while $\frac{f}{(1-F(x))}$ is inversely proportional to $x\beta$. So, a positive sign on IMR should suggest that an increase in IMR (or decrease in $x\beta$ if we are using $\frac{f(x)}{F(-x)}$ leads to higher Y value. In other words, the smaller the likelihood of the first stage model, the greater the Y value. Is that correct?