探索类型学上多样形态变化的神经结构和技术

P. Jayarao, Siddhanth Pillay, P. Thombre, Aditi Chaudhary
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引用次数: 1

摘要

低资源语言的形态屈折变化是扩充低资源语言现有语料库的关键,有助于开发具有良好社会影响的低资源语言应用。我们描述了我们使用lstm和transformer作为基本单元实现的基于注意力的编码器-解码器方法。我们还描述了我们实验的辅助技术,如幻觉、语言向量注入、sparsemax损失和对抗性语言网络,以及我们选择相关语言进行训练的方法。我们展示了我们在有约束和无约束的SIGMORPHON 2020数据集上生成的结果(引文)。本文的主要目标之一是研究上述不同组件对系统性能的贡献,并对其进行分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring Neural Architectures And Techniques For Typologically Diverse Morphological Inflection
Morphological inflection in low resource languages is critical to augment existing corpora in Low Resource Languages, which can help develop several applications in these languages with very good social impact. We describe our attention-based encoder-decoder approach that we implement using LSTMs and Transformers as the base units. We also describe the ancillary techniques that we experimented with, such as hallucination, language vector injection, sparsemax loss and adversarial language network alongside our approach to select the related language(s) for training. We present the results we generated on the constrained as well as unconstrained SIGMORPHON 2020 dataset (CITATION). One of the primary goals of our paper was to study the contribution varied components described above towards the performance of our system and perform an analysis on the same.
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