T-STAR:用AMR图作为中间表示的真实风格迁移

Anubhav Jangra, Preksha Nema, A. Raghuveer
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引用次数: 2

摘要

无法获得用于训练文本风格迁移(TST)模型的并行语料库是一个非常具有挑战性但又很常见的情况。此外,TST模型隐式地需要在将源句子转换为目标风格时保留内容。为了解决这些问题,通常构建一个没有风格的中间表示,同时仍然保留源句子的含义。在这项工作中,我们研究了抽象意义表示(AMR)图作为中间风格不可知论表示的有效性。我们假设像AMR这样的语义符号是中间表示的自然选择。因此,我们提出了T-STAR:一个由两个组件组成的模型,文本到amr编码器和amr到文本解码器。我们提出了几个建模改进,以增强生成的AMR的风格不可知性。据我们所知,T-STAR是第一个使用AMR作为TST的中间表示的工作。经过彻底的实验评估,我们表明T-STAR显著优于最先进的技术,平均提高了15.2%的内容保存,而风格准确性的损失可以忽略不计(约3%)。通过对90,000个评分的详细人类评估,我们还表明,与最先进的TST模型相比,T-STAR的幻觉减少了50%。
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T-STAR: Truthful Style Transfer using AMR Graph as Intermediate Representation
Unavailability of parallel corpora for training text style transfer (TST) models is a very challenging yet common scenario. Also, TST models implicitly need to preserve the content while transforming a source sentence into the target style. To tackle these problems, an intermediate representation is often constructed that is devoid of style while still preserving the meaning of the source sentence. In this work, we study the usefulness of Abstract Meaning Representation (AMR) graph as the intermediate style agnostic representation. We posit that semantic notations like AMR are a natural choice for an intermediate representation. Hence, we propose T-STAR: a model comprising of two components, text-to-AMR encoder and a AMR-to-text decoder. We propose several modeling improvements to enhance the style agnosticity of the generated AMR. To the best of our knowledge, T-STAR is the first work that uses AMR as an intermediate representation for TST. With thorough experimental evaluation we show T-STAR significantly outperforms state of the art techniques by achieving on an average 15.2% higher content preservation with negligible loss (~3%) in style accuracy. Through detailed human evaluation with 90,000 ratings, we also show that T-STAR has upto 50% lesser hallucinations compared to state of the art TST models.
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