Selecting fitted models under epistemic uncertainty using a stochastic process on quantile functions
Alexandre Ren\'e, Andr\'e Longtin

TL;DR
This paper introduces a nonparametric method to select models based on their reproducibility under epistemic uncertainty, improving model choice robustness in scientific and machine learning contexts.
Contribution
It develops a stochastic process-based approach on quantile functions to estimate uncertainty, enhancing model selection under non-stationary replication conditions.
Findings
Method outperforms existing criteria in replicability scenarios.
Effective with both structurally distinct and parameter-differing models.
Shows improved robustness with large datasets.
Abstract
Fitting models to data is an important part of the practice of science. Advances in machine learning have made it possible to fit more -- and more complex -- models, but have also exacerbated a problem: when multiple models fit the data equally well, which one(s) should we pick? The answer depends entirely on the modelling goal. In the scientific context, the essential goal is _replicability_: if a model works well to describe one experiment, it should continue to do so when that experiment is replicated tomorrow, or in another laboratory. The selection criterion must therefore be robust to the variations inherent to the replication process. In this work we develop a nonparametric method for estimating uncertainty on a model's empirical risk when replications are non-stationary, thus ensuring that a model is only rejected when another is _reproducibly_ better. We illustrate the method…
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Taxonomy
TopicsBayesian Modeling and Causal Inference · Machine Learning and Algorithms · Fault Detection and Control Systems
