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Learning how to Active Learn: A Deep Reinforcement Learning Approach

机译:学习如何主动学习:深度强化学习方法

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Active learning aims to select a small subset of data for annotation such that a classifier learned on the data is highly accurate. This is usually done using heuristic selection methods, however the effectiveness of such methods is limited and moreover, the performance of heuristics varies between datasets To address these shortcomings, we introduce a novel formulation by reframing the active learning as a reinforcement learning problem and explicitly learning a data selection policy, where the policy takes the role of the active learning heuristic. Importantly, our method allows the selection policy learned using simulation on one language to be transferred to other languages. We demonstrate our method using cross-lingual named entity recognition, observing uniform improvements over traditional active learning.
机译:主动学习旨在选择一小部分数据进行注释,以使在数据上学习到的分类器非常准确。通常使用启发式选择方法来完成此操作,但是这种方法的有效性是有限的,而且,启发式方法的性能在数据集之间有所不同。为解决这些缺点,我们通过将主动学习重新定义为强化学习问题并明确学习来引入一种新颖的表述数据选择策略,该策略担当主动学习启发式的角色。重要的是,我们的方法允许将使用一种语言的模拟学习到的选择策略转换为其他语言。我们演示了使用跨语言命名的实体识别的方法,并观察了传统主动学习方法的统一改进。

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