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The relationship between in-sample and out-of-sample periods of each... | Download Scientific Diagram
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Scott Marek on X: "Cross-validation is critically important, but insufficient by itself. Published out-of-sample effect size estimates (g) look very similar to in-sample overfitted effect sizes (f, light blue). https://t.co/638WGkPXi6" / X
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