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Deep Bayesian Active Learning for Natural Language Processing: Results of a Large-Scale Empirical Study

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arxiv 1808.05697 v3 pith:6LVO4G2Z submitted 2018-08-16 cs.CL cs.LGstat.ML

Deep Bayesian Active Learning for Natural Language Processing: Results of a Large-Scale Empirical Study

classification cs.CL cs.LGstat.ML
keywords learningactivedeepmultipleacquisitionbayesianempiricalfunctions
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Several recent papers investigate Active Learning (AL) for mitigating the data dependence of deep learning for natural language processing. However, the applicability of AL to real-world problems remains an open question. While in supervised learning, practitioners can try many different methods, evaluating each against a validation set before selecting a model, AL affords no such luxury. Over the course of one AL run, an agent annotates its dataset exhausting its labeling budget. Thus, given a new task, an active learner has no opportunity to compare models and acquisition functions. This paper provides a large scale empirical study of deep active learning, addressing multiple tasks and, for each, multiple datasets, multiple models, and a full suite of acquisition functions. We find that across all settings, Bayesian active learning by disagreement, using uncertainty estimates provided either by Dropout or Bayes-by Backprop significantly improves over i.i.d. baselines and usually outperforms classic uncertainty sampling.

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