Proceedings Article10.1109/ICCT50939.2020.9295753
An Improved Key Sentence Extraction Algorithm Based on Features Computing Oriented to Argumentative Essay
Mengyu Shi,Dan Liu,Hao Wang +2 more
- 28 Oct 2020
- pp 1519-1523
2
TL;DR: This article proposed an improved key sentence extraction algorithm based on features computing, which not only considers word level features, such as keywords attribute, sentiment attribute, verb attribute, conjunction attribute, summary word attribute and viewpoint word attribute, but also includes sentence level features such as position attribute, sentence frequency attribute and title similarity attribute.
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Abstract: Because of the strong logical structure and narrative structure of argumentative essay, we propose an improved key sentence extraction algorithm based on features computing, which not only considers word level features, such as keywords attribute, sentiment attribute, verb attribute, conjunction attribute, summary word attribute and viewpoint word attribute, but also includes sentence level features, such as position attribute, sentence frequency attribute and title similarity attribute. In our algorithm, a scoring mechanism is set for text sentences according to above attributes extraction, then the top sentences are extracted as key sentences. Experiments show that it has good performance and proves the effectiveness of the key sentence extraction algorithm based on features computing.
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Citations
Systematic Literature Review of Text Feature Extraction
Agus Mulyanto,Sri Hartati,Retantyo Wardoyo +2 more
- 08 Dec 2022
TL;DR: A Systematic Literature Review (SLR) as mentioned in this paper analyzes the methods widely used in current text extraction research studies using PICOC method and the total publications used are 23 articles that have been carefully observed in a systematic literature review.
Systematic Literature Review of Text Feature Extraction
08 Dec 2022
TL;DR: A Systematic Literature Review (SLR) as discussed by the authors analyzes the methods widely used in current text extraction research studies using PICOC method and the total publications used are 23 articles that have been carefully observed in a systematic literature review.
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