Keywords: Active learning
TL;DR: Most active learning methods struggle to perform well across both low- and high-budget settings. We propose Uncertainty Herding, a fast and flexible method that adapts to both regimes, consistently matching or surpassing state-of-the-art performance.
Abstract: Most active learning research has focused on methods which perform well when many labels are available, but can be dramatically worse than random selection when label budgets are small.
Other methods have focused on the low-budget regime, but do poorly as label budgets increase.
As the line between "low" and "high" budgets varies by problem,
this is a serious issue in practice.
We propose *uncertainty coverage*,
an objective which generalizes a variety of low- and high-budget objectives,
as well as natural, hyperparameter-light methods to smoothly interpolate between low- and high-budget regimes.
We call greedy optimization of the estimate Uncertainty Herding;
this simple method is computationally fast,
and we prove that it nearly optimizes the distribution-level coverage.
In experimental validation across a variety of active learning tasks,
our proposal matches or beats state-of-the-art performance in essentially all cases;
it is the only method of which we are aware that reliably works well in both low- and high-budget settings.
Primary Area: other topics in machine learning (i.e., none of the above)
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Submission Number: 12790
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