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Efficient Algorithm for Context Sensitive Aggregation in Natural Language Generation

机译:天然语言生成中的上下文敏感聚合的高效算法

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Aggregation is a sub-task of Natural Language Generation (NLG) that improves the conciseness and readability of the text outputted by NLG systems. Till date, approaches towards the aggregation task have been predominantly manual (manual analysis of domain specific corpus and development of rules). In this paper, a new algorithm for aggregation in NLG is proposed, that learns context sensitive aggregation rules from a parallel corpus of multi-sentential texts and their underlying semantic representations. Additionally, the algorithm accepts external constraints and interacts with the surface realizer to generate the best output. Experiments show that the proposed context sensitive probablistic aggregation algorithm performs better than the deterministic hand crafted aggregation rules.
机译:聚合是自然语言生成的子任务(NLG),可提高NLG系统输出的文本的简洁和可读性。到目前为止,融合任务的方法主要是手动(手动分析域特定语料库和规则的发展)。在本文中,提出了一种新的NLG聚合算法,从而了解来自多向语言的并行语料库和其底层语义表示的上下文敏感聚合规则。此外,该算法接受外部约束并与曲面识别器交互以生成最佳输出。实验表明,所提出的上下文敏感验证聚合算法比确定性手工制作聚合规则更好。

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