- Trust literatures over single papers
- Common sense and Bayes’ Rule agree: extraordinary claims require extraordinary evidence
- Trust more when papers publicly share their data and code
- Trust higher-ranked journals more up to the level of top subfields (e.g. Journal of Health Economics, Journal of Labor Economics), but top general-interest journals can be prone to relaxing standards for sensationalist or ideologically favored claims (e.g. The Lancet, PNAS, Science/Nature when covering social science)
- More recent is better for empirical papers, data and methods have tended to improve with time
- Overall effects are more trustworthy than interaction or subgroup effects, the latter two are easier to p-hack and necessarily have lower statistical power
- Trust large experiments most, then quasi-experiments, then small experiments, then traditional regression (add some controls and hope for the best)
- The real effect size is half what the paper claims
That last is inspired by a special issue of Nature out today on the replicability of social science research. An exception to rule #4, this is an excellent project I will write more about soon.
Economics comes out looking pretty good https://x.com/marcportermagee/status/2039460784506376345
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