从意义表示转化多条件生成

Joosung Lee
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引用次数: 3

摘要

我们的研究侧重于语言生成,将代表话语意义的各种信息作为多种生成条件来考虑。从意义表示生成话语通常要经过两个步骤:句子规划和表面实现。然而,我们提出了一个简单的单阶段框架来直接从mr中生成话语。我们的模型基于GPT2,在槽对和值对上生成具有平坦条件的话语,不需要确定句子的结构。我们用6个自动指标评估了E2E数据集中的几个系统。我们的系统是一种简单的方法,但它在自动化度量中展示了与以前系统相当的性能。此外,在没有任何其他技术的情况下,仅使用10%的数据集,我们的模型实现了相当的性能,并显示了执行零射击生成和扩展到其他数据集的可能性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Transforming Multi-Conditioned Generation from Meaning Representation
Our study focuses on language generation by considering various information representing the meaning of utterances as multiple conditions of generation. Generating an utterance from a Meaning representation (MR) usually passes two steps: sentence planning and surface realization. However, we propose a simple one-stage framework to generate utterances directly from MR. Our model is based on GPT2 and generates utterances with flat conditions on slot and value pairs, which does not need to determine the structure of the sentence. We evaluate several systems in the E2E dataset with 6 automatic metrics. Our system is a simple method, but it demonstrates comparable performance to previous systems in automated metrics. In addition, using only 10% of the dataset without any other techniques, our model achieves comparable performance, and shows the possibility of performing zero-shot generation and expanding to other datasets.
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