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Writing a hybrid memoir + narrative science nonfiction book about the statistical paradox of competing risks and how it applies to my near-death. Posts are my own thoughts. This is a personal account. MEDIO·TUTISSIMUS·IBIS CUSTOS·VIAE·MEDIAE
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Who could have predicted this? 🤷🏻‍♂️
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Have @dingdingpeng.the100.ci and/or @vincentab.bsky.social and company written a paper yet about the models as the prediction machines approach applied to causal inference that looks at the issues of regularization bias, and/or unit-varying effects? (Please do)
In Opinion The system that turned Gila monster venom into GLP-1 drugs is being dismantled through research budget cuts, Jeff Coller writes in a guest essay. “Less support for scientists means strange questions no one will get to chase. Exploring those questions is how medicine advances.”