Dear stata users,
I am searching for the right statistical method for my panel data. As I am new to stata, it is not that easy for me to find the right solutions for my problems.
My panel data includes data for soccer players and my dependent variable is, if the player scored in the specific match (dummy variable). But I only want to examine the matches, where the player could score a goal (dummy variable if he played). Therefore my panel data is unbalanced, because a player does not have the opportunity to score every week. Also there are sometimes missing values, if there was no game at that specific week.
To examine the likelihood of scoring a goal: which model could I use and how?
I thought about a logit-model with an if-condition, does this work? Or would you suggest a tobit model/heckman correction? If so, I would appreciate, if you could help me using a tobit model/heckman correction with a dummy variable as a censor.
It would be a pleasure, if you could help me, since I haven't found any solution.
Best Regards,
Maximilian
I am searching for the right statistical method for my panel data. As I am new to stata, it is not that easy for me to find the right solutions for my problems.
My panel data includes data for soccer players and my dependent variable is, if the player scored in the specific match (dummy variable). But I only want to examine the matches, where the player could score a goal (dummy variable if he played). Therefore my panel data is unbalanced, because a player does not have the opportunity to score every week. Also there are sometimes missing values, if there was no game at that specific week.
To examine the likelihood of scoring a goal: which model could I use and how?
I thought about a logit-model with an if-condition, does this work? Or would you suggest a tobit model/heckman correction? If so, I would appreciate, if you could help me using a tobit model/heckman correction with a dummy variable as a censor.
It would be a pleasure, if you could help me, since I haven't found any solution.
Best Regards,
Maximilian

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