Researchers faced with a sequence of candidate model specifications must
often choose the best specification that does not violate a testable
identification assumption. One option in this scenario is sequential
specification tests: hypothesis tests of the identification assumption over the
sequence. Borrowing an idea from the change-point literature, this paper shows
how to use the distribution of p-values from sequential specification tests to
estimate the point in the sequence where the identification assumption ceases
to hold. Unlike current approaches, this method is robust to individual errant
p-values and does not require choosing a test level or tuning parameter. This
paper demonstrates the method's properties with a simulation study, and
illustrates it by application to the problems of choosing a bandwidth in a
regression discontinuity design while maintaining covariate balance and of
choosing a lag order for a time series model