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To Bag is to Prune

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arxiv 2008.07063 v5 pith:4BNGPOHE submitted 2020-08-17 stat.ML cs.LGecon.EM

To Bag is to Prune

classification stat.ML cs.LGecon.EM
keywords ensemblesout-of-sampleperformprunestoppingaggregationapparentarguments
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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It is notoriously difficult to build a bad Random Forest (RF). Concurrently, RF blatantly overfits in-sample without any apparent consequence out-of-sample. Standard arguments, like the classic bias-variance trade-off or double descent, cannot rationalize this paradox. I propose a new explanation: bootstrap aggregation and model perturbation as implemented by RF automatically prune a latent "true" tree. More generally, randomized ensembles of greedily optimized learners implicitly perform optimal early stopping out-of-sample. So there is no need to tune the stopping point. By construction, novel variants of Boosting and MARS are also eligible for automatic tuning. I empirically demonstrate the property, with simulated and real data, by reporting that these new completely overfitting ensembles perform similarly to their tuned counterparts -- or better.

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