Journal Article10.24297/IJCT.V15I5.1630
Enhanced Feature-Based Automatic Text Summarization SystemUsingSupervised Technique
Madhi Ahmed Ali,Ali Al-Dahoud,Bilal Hawashin +2 more
- 05 Apr 2016
- Vol. 15, Iss: 5, pp 6757-6767
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TL;DR: This work evaluates two feature groups: a combination of seven features without any improvements, and the same seven features after making some improvements on Sentence position, Sentence length, and Key word sentence features to enhance the performance of text summarization system.
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Abstract: In this work, we propose an efficient text summarization methodby ranking sentences according to their scores that use a combination of existing and improved sentence features. Many works in the literature proposed improvements to text summarization but this field still needs more improvement. For this purpose, we propose improvements to Sentence position, Sentence length, and Key wordsentence features. Afterwards, we find the optimal combination between these features and some existing features such as Term frequency, Sentence centrality, Title similarity, and Upper case of word. By usingmachine learning techniques, mainly SVM, Naive Bayes and Decision Tree classifiersour paper evaluates two feature groups: a combination of seven features without any improvements,and the same seven features after making some improvements onSentence position, Sentence length, and Key word sentence features to enhance the performance of text summarization system.Experimental results showed that making enhancements on some features improved the accuracy.
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Citations
Text Summarization Using Natural Language Processing
Narendrasinh B. Chauhan,Krunal Patel +1 more
TL;DR: This paper presented an effective way to summarize using a Text Rank algorithm, which focuses on summarizing single Hindi text document at a time based on natural language processing (NLP) for Hindi text documents.
SentMask: A Sentence-Aware Mask Attention-Guided Two-Stage Text Summarization Component
Rui Zhang,Nan Zhang,Jianjun Ye +2 more
TL;DR: The SentMask component is proposed, which designs a sentence-aware mask attention mechanism in the process of generating a text summary that achieves higher ROUGE and BLEU scores compared to other baseline models on two benchmark datasets.
1
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