基于群的文本摘要

M. Binwahlan, N. Salim, Ladda Suanmali
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引用次数: 58

摘要

文本特征的评分机制是确定文本中要作为文本摘要呈现的关键思想的独特方法。对所有文本特征的同等重要程度的处理可以被认为是造成低质量摘要的主要因素。本文提出了一种新的基于群体智能的文本摘要模型。该模型的主要目的是对句子进行评分,强调根据其重要性对文本特征进行公平处理。模型训练得到的权重用于调整文本特征得分,这可以在选择最重要的句子纳入最终摘要的过程中发挥重要作用。结果表明,人类摘要H1和H2的相似度为49%。所提出的模型创建的摘要与手动生成的摘要相似度为43%,而Word summarizer生成的摘要相似度为39%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Swarm Based Text Summarization
The scoring mechanism of the text features is the unique way for determining the key ideas in the text to be presented as text summary. The treating of all text features with same level of importance can be considered the main factor causing creating a summary with low quality. In this paper, we introduced a novel text summarization model based on swarm intelligence. The main purpose of the proposed model is for scoring the sentences, emphasizing on dealing with the text features fairly based on their importance. The weights obtained from the training of the model were used to adjust the text features scores, which could play an important role in the selection process of the most important sentences to be included in the final summary. The results show that the human summaries H1 and H2 are 49% similar to each other. The proposed model creates summaries which are 43% similar to the manually generated summaries, while the summaries produced by Ms Word summarizer are 39% similar.
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