新闻网站的波斯语摘要摘要

F. Kermani, Shirin Ghanbari
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引用次数: 1

摘要

自动抽取文本摘要是在保留重要概念的同时对文本信息进行浓缩的过程。该方法在对输入的波斯语新闻文章进行预处理后,结合统计、语义和启发式方法生成显著句子的特征向量,并相应地进行评分和连接。突出特征的评分是基于文章的标题、专有名词、代词、句子长度、关键词、主题词、句子位置、英语单词和引文。实验结果包括召回率,F-measure, ROUGE-N,并与其他波斯语总结器进行了比较,显示出更高的性能。
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Extractive Persian Summarizer for News Websites
Automatic extractive text summarization is the process of condensing textual information while preserving the important concepts. The proposed method after performing pre-processing on input Persian news articles generates a feature vector of salient sentences from a combination of statistical, semantic and heuristic methods and that are scored and concatenated accordingly. The scoring of the salient features is based on the article’s title, proper nouns, pronouns, sentence length, keywords, topic words, sentence position, English words, and quotations. Experimental results on measurements including recall, F-measure, ROUGE-N are presented and compared to other Persian summarizers and shown to provide higher performance.
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