Dynamic Ensemble Active Learning: A Non-Stationary Bandit with Expert Advice
September 29, 2018 ยท Declared Dead ยท ๐ International Conference on Pattern Recognition
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Authors
Kunkun Pang, Mingzhi Dong, Yang Wu, Timothy M. Hospedales
arXiv ID
1810.07778
Category
cs.LG: Machine Learning
Cross-listed
cs.AI,
stat.ML
Citations
18
Venue
International Conference on Pattern Recognition
Last Checked
3 months ago
Abstract
Active learning aims to reduce annotation cost by predicting which samples are useful for a human teacher to label. However it has become clear there is no best active learning algorithm. Inspired by various philosophies about what constitutes a good criteria, different algorithms perform well on different datasets. This has motivated research into ensembles of active learners that learn what constitutes a good criteria in a given scenario, typically via multi-armed bandit algorithms. Though algorithm ensembles can lead to better results, they overlook the fact that not only does algorithm efficacy vary across datasets, but also during a single active learning session. That is, the best criteria is non-stationary. This breaks existing algorithms' guarantees and hampers their performance in practice. In this paper, we propose dynamic ensemble active learning as a more general and promising research direction. We develop a dynamic ensemble active learner based on a non-stationary multi-armed bandit with expert advice algorithm. Our dynamic ensemble selects the right criteria at each step of active learning. It has theoretical guarantees, and shows encouraging results on $13$ popular datasets.
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