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Maximum Margin Reward Networks for Learning from Explicit and Implicit Supervision

机译:从明确和隐性监督学习的最大保证金奖励网络

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Neural networks have achieved state-of-the-art performance on several structured-output prediction tasks, trained in a fully supervised fashion. However, annotated examples in structured domains are often costly to obtain, which thus limits the applications of neural networks. In this work, we propose Maximum Margin Reward Networks, a neural network-based framework that aims to learn from both explicit (full structures) and implicit supervision signals (delayed feedback on the correctness of the predicted structure) On named entity recognition and semantic parsing, our model outperforms previous systems on the benchmark datasets, CoNLL-2003 and WebQuestionsSP.
机译:神经网络在若干结构化输出预测任务上实现了最先进的性能,以完全监督的方式培训。然而,结构域中的注释示例通常是昂贵的,因此可以限制神经网络的应用。在这项工作中,我们提出了最大的保证金奖励网络,是一种基于神经网络的框架,其旨在从显式(完整结构)和隐式监督信号(延迟反馈)指定实体识别和语义解析中的隐式监督信号(关于预测结构的正确性) ,我们的模型优于基准数据集,Conll-2003和WebQuestionssp上的先前系统。

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