Hello,
I ran a probit regression with 8 predictor variables, which I divided into 4 models. The first model contains 2 predictor variables, x1 and x2. The second model adds a new variable, x3. The third model adds three variables: x4, x5, and x6. Finally, the last model adds 2 more variables, x7 and x8, thus the final model includes all 8 variables.
When I add 𝑥4, x5, and x6, x3 loses some significance, with its p-value increasing from 0.000 to 0.062. Then, in the final model, when I add x7 and x8, x3 loses its significance completely, with a p-value of 0.243.
All VIFs are below 2, indicating there is no high correlation between the variables. I am trying to understand how to explain these changes.
I'd really appreciate your help.
Thank you,
I ran a probit regression with 8 predictor variables, which I divided into 4 models. The first model contains 2 predictor variables, x1 and x2. The second model adds a new variable, x3. The third model adds three variables: x4, x5, and x6. Finally, the last model adds 2 more variables, x7 and x8, thus the final model includes all 8 variables.
When I add 𝑥4, x5, and x6, x3 loses some significance, with its p-value increasing from 0.000 to 0.062. Then, in the final model, when I add x7 and x8, x3 loses its significance completely, with a p-value of 0.243.
All VIFs are below 2, indicating there is no high correlation between the variables. I am trying to understand how to explain these changes.
I'd really appreciate your help.
Thank you,
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