Effective Confidence Region Prediction Using Probability Forecasters

Autor: Lindsay, David, Lindsay, Sian
Rok vydání: 2024
Předmět:
Zdroj: Artificial Intelligence in Medicine 2005
Druh dokumentu: Working Paper
DOI: 10.1007/11527770_66
Popis: Confidence region prediction is a practically useful extension to the commonly studied pattern recognition problem. Instead of predicting a single label, the constraint is relaxed to allow prediction of a subset of labels given a desired confidence level 1-delta. Ideally, effective region predictions should be (1) well calibrated - predictive regions at confidence level 1-delta should err with relative frequency at most delta and (2) be as narrow (or certain) as possible. We present a simple technique to generate confidence region predictions from conditional probability estimates (probability forecasts). We use this 'conversion' technique to generate confidence region predictions from probability forecasts output by standard machine learning algorithms when tested on 15 multi-class datasets. Our results show that approximately 44% of experiments demonstrate well-calibrated confidence region predictions, with the K-Nearest Neighbour algorithm tending to perform consistently well across all data. Our results illustrate the practical benefits of effective confidence region prediction with respect to medical diagnostics, where guarantees of capturing the true disease label can be given.
Comment: 10 pages, originally posted in 2005
Databáze: arXiv