Dear Statalisters,
I have a concern about the number of matced observations from my sample. In other words in my research I am looking at listed and unlisted companies on the stock exchange. So in my attempt to make the sample comparable I applied several matching methods such as: propensity score matching- ( kernel matching, nearest neighbor matching , stratification Matching) and local linear regression matching. But I am confused because each of these methods gives me different result for the treated and control observations and spesifically the local linear regression matching has a lot of control observations . To be clear I am showing you the detailed results of each method.
Your advice will be very useful to clarify how many observations I have in each group.
Please let me know if I need to clarify anything further.
Thank you in advance,
Best wishes
Angeliki
(Stata 16.0 MP)
Kernel matching method:
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Name: kernel matc1.png
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Nearest Neighbor matching method:
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Name: nn matc1.png
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Stratification Matching:
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Name: stratification matc1.png
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Local linear regression matching:
data:image/s3,"s3://crabby-images/0c6bc/0c6bc302925abfea7007988e4e0e925d97b72488" alt="Click image for larger version
Name: psmatch21.png
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I have a concern about the number of matced observations from my sample. In other words in my research I am looking at listed and unlisted companies on the stock exchange. So in my attempt to make the sample comparable I applied several matching methods such as: propensity score matching- ( kernel matching, nearest neighbor matching , stratification Matching) and local linear regression matching. But I am confused because each of these methods gives me different result for the treated and control observations and spesifically the local linear regression matching has a lot of control observations . To be clear I am showing you the detailed results of each method.
Your advice will be very useful to clarify how many observations I have in each group.
Please let me know if I need to clarify anything further.
Thank you in advance,
Best wishes
Angeliki
(Stata 16.0 MP)
Kernel matching method:
Nearest Neighbor matching method:
Stratification Matching:
Local linear regression matching:
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