An Alignment-based Approach to Text Segmentation Similarity Scoring

Gerardo Ocampo Diaz, Jessica Ouyang
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引用次数: 1

Abstract

Text segmentation is a natural language processing task with popular applications, such as topic segmentation, element discourse extraction, and sentence tokenization. Much work has been done to develop accurate segmentation similarity metrics, but even the most advanced metrics used today, B, and WindowDiff, exhibit incorrect behavior due to their evaluation of boundaries in isolation. In this paper, we present a new segment-alignment based approach to segmentation similarity scoring and a new similarity metric A. We show that A does not exhibit the erratic behavior of $ and WindowDiff, quantify the likelihood of B and WindowDiff misbehaving through simulation, and discuss the versatility of alignment-based approaches for segmentation similarity scoring. We make our implementation of A publicly available and encourage the community to explore more sophisticated approaches to text segmentation similarity scoring.
一种基于对齐的文本分割相似度评分方法
文本分割是一种自然语言处理任务,在主题分割、元素话语提取和句子标记化等方面有着广泛的应用。为了开发准确的分割相似性度量,已经做了很多工作,但是即使是目前使用的最先进的度量,B和WindowDiff,由于它们孤立地评估边界,也会表现出不正确的行为。在本文中,我们提出了一种新的基于段对齐的分割相似性评分方法和一个新的相似性度量a。我们表明a不会表现出$和WindowDiff的不稳定行为,通过模拟量化B和WindowDiff错误行为的可能性,并讨论了基于对齐的分割相似性评分方法的通用性。我们公开了A的实现,并鼓励社区探索更复杂的文本分割相似度评分方法。
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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