A curriculum sampling questions with high variance in success rate improves reinforcement learning performance for LLM reasoning tasks.
An Overview and a Benchmark of Active Learning for Outlier Detection with One-Class Classifiers
1 Pith paper cite this work. Polarity classification is still indexing.
abstract
Active learning methods increase classification quality by means of user feedback. An important subcategory is active learning for outlier detection with one-class classifiers. While various methods in this category exist, selecting one for a given application scenario is difficult. This is because existing methods rely on different assumptions, have different objectives, and often are tailored to a specific use case. All this calls for a comprehensive comparison, the topic of this article. This article starts with a categorization of the various methods. We then propose ways to evaluate active learning results. Next, we run extensive experiments to compare existing methods, for a broad variety of scenarios. Based on our results, we formulate guidelines on how to select active learning methods for outlier detection with one-class classifiers.
fields
cs.LG 1years
2025 1verdicts
UNVERDICTED 1representative citing papers
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Learning to Reason at the Frontier of Learnability
A curriculum sampling questions with high variance in success rate improves reinforcement learning performance for LLM reasoning tasks.