使用混合 ACA 和 SLR 解决文本摘要中的歧义问题综述

Sutriawan Sutriawan , Supriadi Rustad , Guruh Fajar Shidik , Pujiono Pujiono , Muljono Muljono
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摘要

文本摘要是创建包含文本文档重要信息的文本摘要的过程。近年来,文本摘要研究领域取得了重大进展,同时也面临着推动整个领域研究进展的挑战。文本数据的发展引发了人们对文本摘要研究的极大兴趣,本调查研究对文本摘要研究进行了全面回顾。迄今为止,文本摘要研究仍在不断改进,采用了各种方法,如抽象法和提取法。抽象法使用输入文档的中间表示来生成摘要,这种摘要可能与原文不同。提取法是从源文件中提取关键句子,并将其合并形成摘要。尽管推荐了各种方法和途径,但所生成的摘要仍然包含歧义,这些歧义可能被解释为不同的含义,从而导致歧义定义错误、摘要质量衡量不确定、语言上下文建模困难、语义表达困难以及歧义类型指定困难。本研究调查对文本摘要研究进行了全面探索,涵盖了挑战、分类、方法、预处理方法、特征、技术和评估方法,满足了未来的研究需求。研究成果概述了文本摘要中歧义解决这一主题的最新研究进展,如研究课题的趋势和解决文本摘要中歧义问题的方法或技术。
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Review of ambiguity problem in text summarization using hybrid ACA and SLR

Text summarization is the process of creating a text summary that contains important information from a text document. In recent years, significant progress has been made in the field of text summarization research, along with the challenges that drive research progress in the field at large. The development of textual data has sparked great interest in text summarization research, which is thoroughly reviewed in this survey study. Text summarization research improvements continue to be made to date with various approaches, such as abstractive and extractive. The abstractive approach uses an intermediate representation of the input document to produce a summary that may differ from the original text. The extractive approach means that key sentences are extracted from the source document and combined to form a summary. Despite the various methodologies and approaches recommended, the summaries produced still contain ambiguities that can be interpreted with different meanings, resulting in errors in defining ambiguities, uncertainty in measuring the quality of summaries, difficulty in modeling linguistic context, difficulty in representing semantic meanings, and difficulty in specifying types of ambiguities. This research survey offers a comprehensive exploration of text summarization research, covering challenges, classifications, approaches, preprocessing methods, features, techniques, and evaluation methods, meeting future research needs. The results provide an overview of the state of the art of recent research developments in the topic of ambiguity resolution in text summarization, such as trends in research topics and approaches or techniques used in addressing ambiguity problems in text summarization.

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