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A Comparative Study of Sentiment-Based Graphs of Text Summaries

机译:基于情感的文本摘要图的比较研究

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Sentiment included in a sentence can indicate whether a sentence may have positive, negative or neutral polarity. Polarity of the sentences is deemed important in text summarization, especially when summarizing narrative texts. This paper proposes to discover the patterns and sentiment scores of the summaries generated by established summarization methods: Luhn, Latent Semantic Analysis (LSA) and LexRank. This is done by conducting a study and comparison on the generated sentiment-based graphs of the summaries. A comparative study is conducted on the sentiment-based graph of the generated summaries with two different sentiment lexicons, namely SentiWordNet and VADER. The analysis is conducted by comparing the patterns of the sentiment-based graph and their sentiment scores as well. In the experiments conducted, there is an obvious pattern for the two sentiment lexicons. This implies that sentiment-based graph's pattern and score are helpful in generating a compact summary. The analysis will alleviate future research on sentiment-based summarization and motivates a new method which can be considered as a graph-based summarization to extract a summary based on its sentiment score.
机译:句子中包含的情绪可以指示句子可能具有正极性,负极性或中性极性。在文本摘要中,尤其是在总结叙事文本时,句子的极性被认为很重要。本文建议发现通过既定的摘要方法(Luhn,潜在语义分析(LSA)和LexRank)生成的摘要的模式和情感分数。这是通过对所生成的基于情感的摘要图进行研究和比较来完成的。对带有两个不同情感词典(即SentiWordNet和VADER)的生成摘要的基于情感图进行了比较研究。通过比较基于情感的图表的模式及其情感得分来进行分析。在进行的实验中,两个情感词典有一个明显的模式。这意味着基于情感的图表的模式和得分有助于生成紧凑的摘要。该分析将减轻对基于情感的摘要的未来研究,并激发一种新方法,该方法可被视为基于图形的摘要,以基于其情感得分提取摘要。

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