I was wondering, why does the teffects psmatch command, only allows to estimate the propensity score by logit or probit? While these are the standard models for probability estimation - I personally quite like the Linear Probability Model (standard OLS with a binary outcome variable) and I assume others have estimated probabilities with different models as well.
See for example the paper Caliendo & Kopeining(2005) fro IZA, which also argues:
"In principle any discrete choice model can be used. Preference for logit or probit models (compared to linear probability models) derives from the well-known shortcomings of the linear probability model, especially the unlikeliness of the functional form when the response variable is highly skewed and predictions that are outside the [0, 1] bounds of probabilities. However, when the purpose of a model is classification rather than estimation of structural coefficients, it is less clear that these criticisms apply (Smith, 1997)."
See for example the paper Caliendo & Kopeining(2005) fro IZA, which also argues:
"In principle any discrete choice model can be used. Preference for logit or probit models (compared to linear probability models) derives from the well-known shortcomings of the linear probability model, especially the unlikeliness of the functional form when the response variable is highly skewed and predictions that are outside the [0, 1] bounds of probabilities. However, when the purpose of a model is classification rather than estimation of structural coefficients, it is less clear that these criticisms apply (Smith, 1997)."
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