利用神经序列模型实现修辞结构的反馈

James Fiacco, Elena Cotos, C. Rosé
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引用次数: 15

摘要

分析学生的写作,无论是为了评估还是为了反馈,都是学习分析领域的兴趣所在。虽然通过检测写作中的局部线索可以取得很大进展,但结构化预测方法提供了特别适合模型需求的能力,旨在提供关于修辞结构的实质性反馈。因此,我们将学术写作中的修辞结构分析作为一项结构化的预测任务,在这项任务中,我们采用了利用写作中本地和全球线索的模型。特别地,本文提出了一种执行此任务的分层神经结构。评估表明,该架构达到了接近人类的性能,同时大大超过了最先进的基线。模型解释的多面方法提供了对模型内部工作原理的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Enabling Feedback on Rhetorical Structure with Neural Sequence Models
Analysis of student writing, both for assessment and for enabling feedback have been of interest to the field of learning analytics. While much progress can be made through detection of local cues in writing, structured prediction approaches offer capabilities that are particularly well tailored to the needs of models aiming to offer substantive feedback on rhetorical structure. We thus cast the analysis of rhetorical structure in academic writing as a structured prediction task in which we employ models that leverage both local and global cues in writing. In particular, this paper presents a hierarchical neural architecture that performs this task. The evaluation demonstrates that the architecture achieves near-human performance while significantly surpassing state-of-the-art baselines. A multifaceted approach to model interpretation offers insights into the inner workings of the model.
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