skills/skillxiv-v0.0.2-claude-opus-4.6/finally-outshining-the-random-baseline-a-simple/SKILL.md
Active learning (AL) has the potential to drastically reduce annotation costs in 3D biomedical image segmentation, where expert labeling of volumetric data is both time-consuming and expensive. Yet, existing AL methods are unable to consistently outperform improved random sampling baselines adapted to 3D data, leaving the field without a reliable solution. We introduce Class-stratified Scheduled Power Predictive Entropy (ClaSP PE), a simple and effective query strategy that addresses two key lim...
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This skill covers research on finally outshining the random baseline: a simple and effective solution. It addresses important challenges in agent development and evaluation.
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