TY - JOUR
T1 - Automatic paper writing based on a RNN and the TextRank algorithm
AU - Wang, Hei Chia
AU - Hsiao, Wei Ching
AU - Chang, Sheng Han
N1 - Funding Information:
The research is based on work supported by the Taiwan Ministry of Science and Technology under Grant No. MOST 107- 2410-H-006 040-MY3 and MOST 108-2511-H-0 06-0 09 . We would like to thank the Center of Innovative Fintech Business Models, Taiwan for a research grant to support this research.
Funding Information:
The research is based on work supported by the Taiwan Ministry of Science and Technology under Grant No. MOST 107- 2410-H-006 040-MY3 and MOST 108-2511-H-0 06-0 09. We would like to thank the Center of Innovative Fintech Business Models, Taiwan for a research grant to support this research.
Publisher Copyright:
© 2020 Elsevier B.V.
PY - 2020/12
Y1 - 2020/12
N2 - Academic research is crucial to the development of science and technology and is an important factor that affects national strength. When writing an academic research paper, a rhetorical structure is typically used to present the paper's ideas, but this task is quite difficult for junior researchers. To solve this problem, some studies have adopted text mining to assist with the writing, but the existing methods still require human intervention to generate sentences. Recently, due to the increasing maturity of deep learning technology and the ability to address the problem of automatic text generation, progress has been made in this area. The highly complex deep learning operations can correctly generate sequences and find correlations between sequences. When a user provides a few keywords and key sentences, the proposed algorithm can generate an introduction section for the user. The results show that the generated introduction is more coherent, clearer, and more fluent than existing summarization methods. In addition, the method proposed in this study improves the accuracy compared with traditional text extraction methods. The manuscript produced by this study has been evaluated to show that the study can produce a comprehensive introduction compared with previous studies.
AB - Academic research is crucial to the development of science and technology and is an important factor that affects national strength. When writing an academic research paper, a rhetorical structure is typically used to present the paper's ideas, but this task is quite difficult for junior researchers. To solve this problem, some studies have adopted text mining to assist with the writing, but the existing methods still require human intervention to generate sentences. Recently, due to the increasing maturity of deep learning technology and the ability to address the problem of automatic text generation, progress has been made in this area. The highly complex deep learning operations can correctly generate sequences and find correlations between sequences. When a user provides a few keywords and key sentences, the proposed algorithm can generate an introduction section for the user. The results show that the generated introduction is more coherent, clearer, and more fluent than existing summarization methods. In addition, the method proposed in this study improves the accuracy compared with traditional text extraction methods. The manuscript produced by this study has been evaluated to show that the study can produce a comprehensive introduction compared with previous studies.
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U2 - 10.1016/j.asoc.2020.106767
DO - 10.1016/j.asoc.2020.106767
M3 - Article
AN - SCOPUS:85092484311
SN - 1568-4946
VL - 97
JO - Applied Soft Computing Journal
JF - Applied Soft Computing Journal
M1 - 106767
ER -