| Authors | مهسا افشاری زاده,حسین ابراهیم پور کومله,ایوب باقری |
| Journal | Frontiers in Biomedical Technologies |
| Page number | 236 |
| Volume number | 7 |
| Paper Type | Full Paper |
| Published At | 2020-12-30 |
| Journal Grade | Scientific - research |
| Journal Type | Electronic |
| Journal Country | Iran, Islamic Republic Of |
Abstract
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.