https://arxiv.org/abs/2301.12600
'Bagging Provides Assumption-free Stability'
- Jake A. Soloff, Rina Foygel Barber, Rebecca Willett

Bagging (bootstrap aggregation) is an algorithm-agnostic tool for improving the stability of predictive algorithms. This work obtains finite-sample guarantees which rigorously characterise how this stability is achieved.

#sparxivdigest

Bagging Provides Assumption-free Stability

Bagging is an important technique for stabilizing machine learning models. In this paper, we derive a finite-sample guarantee on the stability of bagging for any model. Our result places no assumptions on the distribution of the data, on the properties of the base algorithm, or on the dimensionality of the covariates. Our guarantee applies to many variants of bagging and is optimal up to a constant. Empirical results validate our findings, showing that bagging successfully stabilizes even highly unstable base algorithms.

arXiv.org
@sp_monte_carlo what tools are you using to peruse arxiv ?
@carter just reading through the listings on maths and stats, nothing fancy
@sp_monte_carlo just the rss feeds or the category web page each day or ? I’m definitely too overcommitted atm to do that sort of thing sadly
@carter the latter, just opening up the websites and speed-skimming titles and abstracts