Improving Classifier Confidence using Lossy Label-Invariant Transformations

Loading...
Thumbnail Image

Related Collections

Degree type

Discipline

Subject

CPS Machine Learning
Computer Engineering
Computer Sciences

Funder

Grant number

License

Copyright date

Distributor

Related resources

Contributor

Abstract

Providing reliable model uncertainty estimates is imperative to enabling robust decision making by autonomous agents and humans alike. While recently there have been significant advances in confidence calibration for trained models, examples with poor calibration persist in most calibrated models. Consequently, multiple techniques have been proposed that leverage label-invariant transformations of the input (i.e., an input manifold) to improve worst-case confidence calibration. However, manifold-based confidence calibration techniques generally do not scale and/or require expensive retraining when applied to models with large input spaces (e.g., ImageNet). In this paper, we present the recursive lossy label-invariant calibration (ReCal) technique that leverages label-invariant transformations of the input that induce a loss of discriminatory information to recursively group (and calibrate) inputs – without requiring model retraining. We show that ReCal outperforms other calibration methods on multiple datasets, especially, on large-scale datasets such as ImageNet.

Advisor

Date of presentation

2021-04-01

Conference name

Departmental Papers (CIS)

Conference dates

2023-05-18T01:23:43.000

Conference location

Date Range for Data Collection (Start Date)

Date Range for Data Collection (End Date)

Digital Object Identifier

Series name and number

Volume number

Issue number

Publisher

Publisher DOI

relationships.isJournalIssueOf

Comments

24th International Conference on Artificial Intelligence and Statistics (AISTATS)(https://aistats.org/aistats2021/) 2021, April 13-15 2021, Virtual. PMLR: Volume 130 (http://proceedings.mlr.press/v130/)

Recommended citation

Collection