AI RESEARCH
Select, Label, Evaluate: Active Testing in NLP
arXiv CS.AI
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ArXi:2603.21840v1 Announce Type: cross Human annotation cost and time remain significant bottlenecks in Natural Language Processing (NLP), with test data annotation being particularly expensive due to the stringent requirement for low-error and high-quality labels necessary for reliable model evaluation. Traditional approaches require annotating entire test sets, leading to substantial resource requirements. Active Testing is a framework that selects the most informative test samples for annotation.