Challenges in Domain-Specific Abstractive Summarization and How to Overcome Them

Anum Afzal, Juraj Vladika, Daniel Braun, Florian Matthes
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引用次数: 1

Abstract

Large Language Models work quite well with general-purpose data and many tasks in Natural Language Processing. However, they show several limitations when used for a task such as domain-specific abstractive text summarization. This paper identifies three of those limitations as research problems in the context of abstractive text summarization: 1) Quadratic complexity of transformer-based models with respect to the input text length; 2) Model Hallucination, which is a model's ability to generate factually incorrect text; and 3) Domain Shift, which happens when the distribution of the model's training and test corpus is not the same. Along with a discussion of the open research questions, this paper also provides an assessment of existing state-of-the-art techniques relevant to domain-specific text summarization to address the research gaps.
特定领域抽象总结的挑战及克服方法
大型语言模型可以很好地处理通用数据和自然语言处理中的许多任务。然而,当用于特定领域的抽象文本摘要等任务时,它们显示出一些限制。本文指出了抽象文本摘要研究中的三个局限性:1)基于转换器的模型相对于输入文本长度的二次复杂度;2)模型幻觉,即模型生成与事实不符的文本的能力;3) Domain Shift,当模型的训练语料库和测试语料库的分布不相同时发生。除了讨论开放的研究问题外,本文还提供了与特定领域文本摘要相关的现有最先进技术的评估,以解决研究空白。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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