An algorithm of word indexing model for document summarization based on perspective of document

M. Shah
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Abstract

Natural language processing (NLP) is an area of computer science, artificial intelligence, and computational linguistics connected with the communications between computers and natural languages. There are many challenges in NLP involve natural language understanding, that is, enabling computers to derive meaning from human or natural language input, and others involve natural language generation. Document summarization is a part of it. Many different classes of such process based on machine learning are developed. In researches earlier document summarization mostly use the similarity between sentences in the document to extract the most significant sentences. The documents as well as the sentences are indexed using traditional term indexing measures, which do not take the context into consideration. The resulting indexing weights are used to compute the sentence similarity matrix. The proposed sentence similarity measure has been used with the baseline graph-based ranking models for sentence extraction.
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基于文档视角的文档摘要词标引模型算法
自然语言处理(NLP)是计算机科学、人工智能和计算语言学的一个领域,与计算机和自然语言之间的通信有关。NLP中有许多挑战涉及自然语言理解,即使计算机能够从人类或自然语言输入中获得意义,其他挑战涉及自然语言生成。文档摘要是其中的一部分。基于机器学习的许多不同类别的这种过程被开发出来。在早期的文献摘要研究中,大多利用文献中句子之间的相似度来提取最重要的句子。文档和句子都是使用传统的术语索引方法进行索引的,这些方法没有考虑上下文。得到的索引权重用于计算句子相似度矩阵。所提出的句子相似度度量已与基于基线图的排序模型一起用于句子提取。
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