COMPENDIUM: A Text Summarization System for Generating Abstracts of Research Papers

Author(s):  
Elena Lloret ◽  
María Teresa Romá-Ferri ◽  
Manuel Palomar
2013 ◽  
Vol 88 ◽  
pp. 164-175 ◽  
Author(s):  
Elena Lloret ◽  
María Teresa Romá-Ferri ◽  
Manuel Palomar

Author(s):  
Mahsa Afsharizadeh ◽  
Hossein Ebrahimpour-Komleh ◽  
Ayoub Bagheri

Purpose: Pandemic COVID-19 has created an emergency for the medical community. Researchers require extensive study of scientific literature in order to discover drugs and vaccines. In this situation where every minute is valuable to save the lives of hundreds of people, a quick understanding of scientific articles will help the medical community. Automatic text summarization makes this possible. Materials and Methods: In this study, a recurrent neural network-based extractive summarization is proposed. The extractive method identifies the informative parts of the text. Recurrent neural network is very powerful for analyzing sequences such as text. The proposed method has three phases: sentence encoding, sentence ranking, and summary generation. To improve the performance of the summarization system, a coreference resolution procedure is used. Coreference resolution identifies the mentions in the text that refer to the same entity in the real world. This procedure helps to summarization process by discovering the central subject of the text. Results: The proposed method is evaluated on the COVID-19 research articles extracted from the CORD-19 dataset. The results show that the combination of using recurrent neural network and coreference resolution embedding vectors improves the performance of the summarization system. The Proposed method by achieving the value of ROUGE1-recall 0.53 demonstrates the improvement of summarization performance by using coreference resolution embedding vectors in the RNN-based summarization system. Conclusion: In this study, coreference information is stored in the form of coreference embedding vectors. Jointly use of recurrent neural network and coreference resolution results in an efficient summarization system.


Author(s):  
Pedro Paulo Balage Filho ◽  
Vinícius Rodrigues de Uzêda ◽  
Thiago Alexandre Salgueiro Pardo ◽  
Maria das Graças Volpe Nunes

2016 ◽  
Vol 64 ◽  
pp. 265-272 ◽  
Author(s):  
Duy Duc An Bui ◽  
Guilherme Del Fiol ◽  
John F. Hurdle ◽  
Siddhartha Jonnalagadda

2015 ◽  
Vol 8 (2) ◽  
pp. 261-277 ◽  
Author(s):  
Vishal Gupta ◽  
Narvinder Kaur

2021 ◽  
Vol 37 (2) ◽  
pp. 123-143
Author(s):  
Tuan Minh Luu ◽  
Huong Thanh Le ◽  
Tan Minh Hoang

Deep neural networks have been applied successfully to extractive text summarization tasks with the accompany of large training datasets. However, when the training dataset is not large enough, these models reveal certain limitations that affect the quality of the system’s summary. In this paper, we propose an extractive summarization system basing on a Convolutional Neural Network and a Fully Connected network for sentence selection. The pretrained BERT multilingual model is used to generate embeddings vectors from the input text. These vectors are combined with TF-IDF values to produce the input of the text summarization system. Redundant sentences from the output summary are eliminated by the Maximal Marginal Relevance method. Our system is evaluated with both English and Vietnamese languages using CNN and Baomoi datasets, respectively. Experimental results show that our system achieves better results comparing to existing works using the same dataset. It confirms that our approach can be effectively applied to summarize both English and Vietnamese languages.


Author(s):  
Shaguna Awasth

Using automatic text summarization we can reduce a document to its main information or to what is known as crux of the document .Recent research in this zone has zeroed in on neural ways to deal with summarisation, which can be very data hungry. This paper aims to explore a quicker way by implementing a supervised-learning based extractive summarisation system for the summarisation of research papers. This paper also explores the possibility of any section, in a research paper being the prime section to generate summaries by utilizing ROUGE scores. An easy to implement and intuitive model is developed using glove embeddings and doc2vec to encode sentences and documents in their local and global context producing grammatically coherent summaries.


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