Making Reliable and Flexible Decisions in Long-tailed Classification
Journal:
arXiv
Published Date:
Jan 23, 2025
Abstract
Long-tailed classification is challenging due to its heavy imbalance in class
probabilities. While existing methods often focus on overall accuracy or
accuracy for tail classes, they overlook a critical aspect: certain types of
errors can carry greater risks than others in real-world long-tailed problems.
For example, misclassifying patients (a tail class) as healthy individuals (a
head class) entails far more serious consequences than the reverse scenario. To
address this critical issue, we introduce Making Reliable and Flexible
Decisions in Long-tailed Classification (RF-DLC), a novel framework aimed at
reliable predictions in long-tailed problems. Leveraging Bayesian Decision
Theory, we introduce an integrated gain to seamlessly combine long-tailed data
distributions and the decision-making procedure. We further propose an
efficient variational optimization strategy for the decision risk objective.
Our method adapts readily to diverse utility matrices, which can be designed
for specific tasks, ensuring its flexibility for different problem settings. In
empirical evaluation, we design a new metric, False Head Rate, to quantify
tail-sensitivity risk, along with comprehensive experiments on multiple
real-world tasks, including large-scale image classification and uncertainty
quantification, to demonstrate the reliability and flexibility of our method.