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Discourse Marker Augmented Network with Reinforcement Learning for Natural Language Inference

机译:话语标记增强网络与自然语言推理的强化学习

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Natural Language Inference (NLI), also known as Recognizing Textual Entailment (RTE), is one of the most important problems in natural language processing. It requires to infer the logical relationship between two given sentences. While current approaches mostly focus on the interaction architectures of the sentences, in this paper, we propose to transfer knowledge from some important discourse markers to augment the quality of the NLI model. We observe that people usually use some discourse markers such as "so" or "but" to represent the logical relationship between two sentences. These words potentially have deep connections with the meanings of the sentences, thus can be utilized to help improve the representations of them. Moreover, we use reinforcement learning to optimize a new objective function with a reward defined by the property of the NLI datasets to make full use of the labels information. Experiments show that our method achieves the state-of-the-art performance on several large-scale datasets.
机译:自然语言推理(NLI),也称为识别文本蕴涵(RTE),是自然语言处理中最重要的问题之一。它需要推断两个给定句子之间的逻辑关系。虽然当前的方法主要关注句子的交互体系结构,但在本文中,我们建议从一些重要的语篇标记中转移知识,以提高NLI模型的质量。我们观察到人们通常使用一些话语标记,例如“ so”或“ but”来表示两个句子之间的逻辑关系。这些单词可能与句子的含义有很深的联系,因此可以用来帮助改进它们的表示形式。此外,我们使用强化学习来优化新的目标函数,并通过NLI数据集的属性定义奖励,以充分利用标签信息。实验表明,我们的方法在几个大型数据集上都达到了最先进的性能。

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