基于TextRank和最大边际关联的印尼语文本多文档摘要

D. Gunawan, Siti Hazizah Harahap, Romi Fadillah Rahmat
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引用次数: 7

摘要

文本摘要器通过选择重要的句子来减少不必要的信息。在多文档摘要中,可能存在两个或多个重要句子共享相似信息的情况。在总结结果中加入这些句子会产生冗余信息。本研究旨在减少多文档中共享相似信息的相似句子,以获得更简洁的文本摘要。为了达到目的,本研究采用了几篇网络新闻文章的结合,分为六组。合并后的文章经过预处理以产生干净的文本。在获得干净的文本后,本研究利用TextRank算法通过相似度度量提取重要句子。此过程将生成摘要文本。然而,总结的文本仍然包含类似的句子。下一步是计算最大边际相关性(MMR)来减少相似句子。这一过程的结果就是最后的文本总结。评价采用ROUGE-1和ROUGE-2,平均f值分别为0.5103和0.4257。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-document Summarization by using TextRank and Maximal Marginal Relevance for Text in Bahasa Indonesia
The text summarizer reduces unnecessary information by selecting the important sentences. In multi-document summarization, there is a possibility that two or more important sentences share similar information. Including those sentences to the summary result will cause redundant information. This research aims to reduce similar sentences from multi-document that share similar information to obtain a more concise text summary. In order to accomplish the objective, this research uses the combination of several online news articles, divided into six groups. The combined articles are pre-processed to produce a clean text. After obtaining the clean text, this research utilizes the TextRank algorithm to extract the important sentences by using the similarity measurement. This process yields the summarized text. However, the summarized text is still containing similar sentences. The next process is calculating Maximal Marginal Relevance (MMR) to reduce similar sentences. The result of this process is the final text summary. The evaluation uses ROUGE-1 and ROUGE-2 with the average F-score is 0.5103 and 0.4257, respectively.
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