학술논문

Generalised Active Learning With Annotation Quality Selection
Document Type
Conference
Source
2023 IEEE 33rd International Workshop on Machine Learning for Signal Processing (MLSP) Machine Learning for Signal Processing (MLSP), 2023 IEEE 33rd International Workshop on. :1-6 Sep, 2023
Subject
Signal Processing and Analysis
Training
Costs
Annotations
Conferences
Machine learning
Signal processing
Complexity theory
Active learning
noisy labels
mutual information
Language
ISSN
2161-0371
Abstract
In this paper we promote a general formulation of active learning (AL), wherein the typically binary decision to annotate a point or not is extended to selecting the qualities with which the points should be annotated. By linking the annotation quality to the cost of acquiring the label, we can trade a lower quality for a larger set of training samples, which may improve learning for the same annotation cost. To investigate this AL formulation, we introduce a concrete criterion, based on the mutual information (MI) between model parameters and noisy labels, for selecting annotation qualities for the entire dataset, before any labels are acquired. We illustrate the usefulness of our formulation with examples for both classification and regression and find that MI is a good candidate for a criterion, but its complexity limits its usefulness.