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by kuhewa
1733 days ago
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Scientists aren't stupid. No one saw a paper where a predictor explained 1% of the variance in an outcome and based solely on a significant p value decided that was a great road to base an entire career on. The problem, as described by the parent comment, doesn't really exist in funding structures and the scientific literature. It does occur to some degree in media coverage of science. One could make the case that in GWAS studies it has occured, but not because small effect sizes are inconsequential, the statistical methods just weren't able to separate grain from chaff for a while. An allele that is responsible for 2% of the variation in disease risk might seem inconsequential, but 25 of those together can serve as a polygenic risk score that can predict disease and target treatment. |
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Of course they're stupid. Everyone is stupid. That's why we have a "scientific method" and a formal discipline of logic to overcome fallacious reasoning and cognitive biases. If people weren't stupid we wouldn't need any of these disciplines to check our mistakes.
And yes, what you describe does happen all of the time. We literally just had a thread on HN about the failure of the amyloid hypothesis in Alzheimer's and the decades of work put wasted on it. Many researchers are still trying to push it as a legitimate therapeutic target despite every clinical trial to date failing spectacularly. As Planck said, science advances on funeral at a time.
Which isn't to say that small effect sizes aren't legitimate research targets either, but if you're after a a small effect size, the rigour should be scaled proportionally.