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On the Importance of Adaptive Data Collection for Extremely Imbalanced Pairwise Tasks

10 October 2020
Stephen Mussmann
Robin Jia
Percy Liang
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Abstract

Many pairwise classification tasks, such as paraphrase detection and open-domain question answering, naturally have extreme label imbalance (e.g., 99.99%99.99\%99.99% of examples are negatives). In contrast, many recent datasets heuristically choose examples to ensure label balance. We show that these heuristics lead to trained models that generalize poorly: State-of-the art models trained on QQP and WikiQA each have only 2.4%2.4\%2.4% average precision when evaluated on realistically imbalanced test data. We instead collect training data with active learning, using a BERT-based embedding model to efficiently retrieve uncertain points from a very large pool of unlabeled utterance pairs. By creating balanced training data with more informative negative examples, active learning greatly improves average precision to 32.5%32.5\%32.5% on QQP and 20.1%20.1\%20.1% on WikiQA.

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