法律裁决总结:比较实验

Diego de Vargas Feijó, V. Moreira
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引用次数: 10

摘要

在文本摘要的语境下,法律领域的文本在其长度和专业词汇方面具有特殊性。最近基于神经网络的方法可以获得高质量的文本摘要分数。然而,这些方法主要用于为新闻文章生成非常短的摘要。因此,它们对法律领域的适用性仍然是一个悬而未决的问题。在这项工作中,我们在一个真实的法律裁决数据集中实验了10个抽取模型和4个抽象模型。将这些模型与基于启发式的提取基线进行比较,以选择文本中最相关的部分。我们的研究结果表明,抽象方法在ROUGE得分方面明显优于提取方法。
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Summarizing Legal Rulings: Comparative Experiments
In the context of text summarization, texts in the legal domain have peculiarities related to their length and to their specialized vocabulary. Recent neural network-based approaches can achieve high-quality scores for text summarization. However, these approaches have been used mostly for generating very short abstracts for news articles. Thus, their applicability to the legal domain remains an open issue. In this work, we experimented with ten extractive and four abstractive models in a real dataset of legal rulings. These models were compared with an extractive baseline based on heuristics to select the most relevant parts of the text. Our results show that abstractive approaches significantly outperform extractive methods in terms of ROUGE scores.
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