Abstractive Summarization of Text using Encoder-Decoder Based Architecture
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https://doi.org/10.61841/zafdgz89Keywords:
Abstractive Summarization of Text using Encoder-Decoder Based ArchitectureAbstract
The internet keeps bringing tons and tons of information to its users on a daily basis—reading everything can consume months or years and sometimes even decades. Access to this much information has helped us in several disciplines, but at times we are overwhelmed with information and end up getting confused. To solve this to the extent possible, there are summarization techniques that automatically reduce the given text to a considerable size that can be easily studied. Such large text documents are quite impossible for humans to summarize and might end up useless since the scope of the information might change during the summarization process. This is where computers come into the scene. Computers are way better at handling large amounts of data than humans since they can easily do repetitive tasks with accuracy and speed. Computers summarize and give us a comparatively small, note-like document to simplify our workload. Though there are several techniques widely used for summarizing documents, they can be widely classified into two categories: abstractive and extractive summarization. Many projects have been published on extraction summarization; however, it cannot provide summaries close to human language. We try to provide summaries close to human language using the abstractive text summarization method. This project uses neural network models for abstractive summarization on long texts.
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1. R. Nallapati, F. Zhai, and Zhou. Summarunner: A recurrent neural network-based sequence model for extractive summarization of documents. arXiv preprint arXiv:1611.04230, 2016
2. Das, D. and Martins, A. F. (2007). A survey on automatic text summarization.
3. Ramesh Nallapati, Bowen Zhou, Caglar CaglarGulcehre, Bing Xiang, et al. Abstractive text summarization using
sequence-to-sequence RNNs and beyond. arXiv preprint arXiv:1602.06023, 2016
4. Gambhir, M. and Gupta, V. (2017). Recent automatic text summarization techniques: a survey. Artificial
Intelligence Review, 47(1):1–66
5. N. Bhatia and A. Jaiswal, “Automatic text summarization and it’s methods-a review,” in Cloud System
and Big Data Engineering (Confluence), 2016 6th International Conference. IEEE, 2016, pp. 65–72 Mani
and M. T. Maybury, Advances in automatic text summarization. MIT Press, 1999.
6. S.A. Babar, P. D. Patil, “Improving Performance of Text Summarization,” International Conference on
Information and Communication Technologies, ICICT, 2014.
7. Sherry, P. Bhatia, “A Survey to Automatic Summarization Techniques,” International Journal of
Engineering Research and General Science, Volume 3, Issue 5, September-October, 2015.
8. S. Karmakar, T. Lad, H. Chothani, A Review Paper on Extractive Techniques of Text Summarization,
International Research Journal of Computer Science (IRJCS) Issue 1, Volume 2, 2015.
9. F. C. Pembe and T. Güngör, “Automated Query-biased and Structure-preserving Text Summarization on Web Documents,” in Proceedings of the International Symposium on Innovations in Intelligent Systems and Applications, İstanbul, June 2007.
10. G. Yihong, X. Liu. "Generic text summarization using relevance measure and latent semantic analysis." Proceedings of the 24th annual international ACM SIGIR conference on Research and development in information retrieval, ACM, 2001
11. S. Alfayoumy, J. Thoppil, A Survey of Unstructured Text Summarization Techniques, International Journal of Advanced Computer Science and Applications, Vol. 5, No. 4, 2014.
12. L. Suanmali, N. Salim, and M. S. Binwahlan, “Fuzzy Logic Based Method for Improving Text Summarization,” International Journal of Computer Science and Information Security, Vol. 2, No. 1, 2009.
13. P. P.Priya, G., and K. Duraiswamy, “An Approach for Text Summarization Using Deep Learning Algorithm,” Journal of Computer Science, 19, 2014.
14. Amy J.C. Trappey and Charles V. Trappey, “An R&D knowledge management method for patent document summarization,” Industrial Management & Data Systems, vol. 108, pp. 245-257, 2008.
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