Taming Small-sample Bias in Low-budget Active Learning

06/19/2023
by   Linxin Song, et al.
0

Active learning (AL) aims to minimize the annotation cost by only querying a few informative examples for each model training stage. However, training a model on a few queried examples suffers from the small-sample bias. In this paper, we address this small-sample bias issue in low-budget AL by exploring a regularizer called Firth bias reduction, which can provably reduce the bias during the model training process but might hinder learning if its coefficient is not adaptive to the learning progress. Instead of tuning the coefficient for each query round, which is sensitive and time-consuming, we propose the curriculum Firth bias reduction (CHAIN) that can automatically adjust the coefficient to be adaptive to the training process. Under both deep learning and linear model settings, experiments on three benchmark datasets with several widely used query strategies and hyperparameter searching methods show that CHAIN can be used to build more efficient AL and can substantially improve the progress made by each active learning query.

READ FULL TEXT
research
10/22/2021

A Simple Baseline for Low-Budget Active Learning

Active learning focuses on choosing a subset of unlabeled data to be lab...
research
09/13/2021

Mitigating Sampling Bias and Improving Robustness in Active Learning

This paper presents simple and efficient methods to mitigate sampling bi...
research
08/01/2023

ALE: A Simulation-Based Active Learning Evaluation Framework for the Parameter-Driven Comparison of Query Strategies for NLP

Supervised machine learning and deep learning require a large amount of ...
research
09/20/2019

Sampling Bias in Deep Active Classification: An Empirical Study

The exploding cost and time needed for data labeling and model training ...
research
05/23/2022

Active Learning Through a Covering Lens

Deep active learning aims to reduce the annotation cost for deep neural ...
research
12/13/2021

Addressing Bias in Active Learning with Depth Uncertainty Networks... or Not

Farquhar et al. [2021] show that correcting for active learning bias wit...
research
06/06/2023

How to Select Which Active Learning Strategy is Best Suited for Your Specific Problem and Budget

In Active Learning (AL), a learner actively chooses which unlabeled exam...

Please sign up or login with your details

Forgot password? Click here to reset