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Syntactic realization with data-driven neural tree grammars

机译:数据驱动的神经树语法的句法实现

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A key component in surface realization in natural language generation is to choose concrete syntactic relationships to express a target meaning. We develop a new method for syntactic choice based on learning a stochastic tree grammar in a neural architecture. This framework can exploit state-of-the-art methods for modeling word sequences and generalizing across vocabulary. We also induce embeddings to generalize over elementary tree structures and exploit a tree recurrence over the input structure to model long-distance influences between NLG choices. We evaluate the models on the task of linearizing unannotated dependency trees, documenting the contribution of our modeling techniques to improvements in both accuracy and run time.
机译:自然语言生成中表面实现的关键部分是选择具体的句法关系来表达目标含义。我们在学习神经体系结构中的随机树语法的基础上,开发了一种新的句法选择方法。该框架可以利用最先进的方法来对单词序列进行建模并跨词汇进行概括。我们还诱导嵌入以对基本树结构进行泛化,并利用输入结构上的树重现来对NLG选择之间的远程影响进行建模。我们评估模型的任务是线性化未注释的依赖关系树,记录了我们的建模技术对提高准确性和运行时间的贡献。

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