How can you use propensity score matching effectively?

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Propensity score matching is a popular technique for estimating causal effects in observational studies, where you cannot randomly assign units to treatment and control groups. It allows you to compare units that have similar probabilities of receiving the treatment, based on their observed characteristics. This way, you can reduce the bias caused by confounding variables and mimic a randomized experiment. But how can you use propensity score matching effectively? Here are some tips and best practices to help you.

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