Details



LEVERAGING THE NATURAL LANGUAGE TOOLS AND TECHNIQUES IN ENHANCING THE EFFICACY OF THE TEXT OUTLINE OF FINTECH REQUEST FOR PROPOSALS (RFPs)

Smriti Narang

39-46

Vol 15, Jan-Jun, 2022

Date of Submission: 2022-01-15 Date of Acceptance: 2022-03-10 Date of Publication: 2022-04-09

Abstract

In the present day and age, where tremendous amounts of text-based information are produced consistently, keeping ourselves side by side with new data has become troublesome. Reports in the monetary area recount a quantitative story. On the other hand, the subjective or language content that goes with fiscal reports is a fundamental part of the data set utilized by monetary market members for checking and stewardship. This requires the advancement of proficient innovative strategies for utilizing the presence of these monstrous sums of literary information. Perusing monetary reports like yearly reports is incredibly tedious, and consequently, organizations need to distribute valuable human resources to comprehend, examine, and understand these reports. Accordingly, programmed outline strategies can simplify this assignment by empowering admittance to a more modest yet instructive part of the guaranteed record. In this work, a framework using NLP methods for summing up monetary logs in light of questions given by the client is introduced. This framework conquers the difficulties presented by existing segment-based outline models. As AI strategies have been demonstrated to be compelling on downstream errands, for example, text outline. This work aims to exploit these techniques for clear extractive review and create human-like synopses. The proposed model classifies phrases according to their pertinence by utilizing the strength of solo grouping approaches, and it gets a ROUGE-1 score of 46%.

References

  1. Abdaljalil, Samir, and Houda Bouamor. 'An exploration of automatic text summarization of financial reports.' In Proceedings of the Third Workshop on Financial Technology and Natural Language Processing, pp. 1-7. 2021
  2. El-Haj, M., AbuRa’ed, A., Litvak, M. & Pittaras, N., Giannakopoulos, G. (2020). The Financial Narrative Summarisation Shared Task (FNS 2020).
  3. Van Lierde, H., Chow, T. W. S. (2019). Query-oriented text summarization based on hypergraph transversals. Information Processing and Management, 56(4), 1317–1338.
  4. Khan, R., Qian, Y., Naeem, S. (2019). Extractive-based text summarization using KMEANS and TF-IDF. International Journal of Information Engineering and Electronic Business, 11(3), 33–44.
  5. Araci, D. (2019, August 27). FinBERT: Financial Sentiment Analysis with Pre-trained Language Models.
  6. Laskar, M. T. R. (2020, November 14). Utilizing Bidirectional Encoder Representations from Transformers.
  7. Hernandez-Castaneda, A., Garcia-Hernandez, R. A., Ledeneva, Y. Millan-Hernandez, C. E. (2020). Extractive Automatic Text Summarization Based on Lexical-Semantic Keywords. IEEE Access, 8, 49896–49907.
  8. Yong, S. P., Abidin, A. I. Z., & Chen, Y. Y. (2006). A neural-based text summarization system. Data Mining VII: Data, Text and Web Mining and Their Business Applications.
  9. Zheng, S., Lu, A.,& Cardie, C. (2020). SUMSUM@FNS-2020 Shared Task
  10. Litvak, Marina, Natalia Vanetik, and Zvi Puchinsky. 'Hierarchical summarization of financial reports with RUNNER.' In Proceedings of the 1st Joint Workshop on Financial Narrative Processing and MultiLing Financial Summarisation, pp. 213-225. 2020..
  11. Azzi, Abderrahim Ait, and Juyeon Kang. 'Extractive summarization system for annual reports.' In Proceedings of the 1st Joint Workshop on Financial Narrative Processing and MultiLing Financial Summarisation, pp. 143-147. 2020.
  12. Mingjun Zhao, Shengli Yan, Bang Liu, Xinwang Zhong, Qian Hao, Haolan Chen, Di Niu, Bowei Long, Weidong Guo. QBSUM: a Large-Scale Query-Based Document Summarization Dataset from Real-world Applications
  13. Lin, Chin-Yew. 'Rouge: A package for automatic evaluation of summaries.' In Text summarization branches out, pp. 74-81. 2004.
  14. Lin, H., Bilmes, J. (2010). Multi-document summarization via budgeted maximization of submodular functions. HLT ’10, Human language technologies: The 2010 annual conference of the north American chapter of the association for computational linguistics. St roudsburg, PA, USA: ACL912–920.
  15. Teh, Y. W., Jordan, M. I., Beal, M. J., Blei, D. M. (2004). Sharing clusters among related groups: hierarchical Dirichlet processes. Proceedings of the seventeenth international conference on neural information processing systems, NIP S’04. Cambridge, MA, USA: MIT Press1385–1392.
Download PDF
Back

alexistogel toto online

bandar alexistogel

alexistogel bandar gacor

alexistogel link

alexistogel online

alexistogel bandar togel

link alternatif alexistogel

alexistogel

alexistogel

alexistogel

alexistogel daftar

alexistogel toto macau

alexistogel bandar macau

alexistogel slot

alexistogel agen slot

situs alexistogel

alexistogel

alexistogel

alexistogel

alexistogel

alexistogel bandar slot

alexistogel

Alexistogel Toto Macau

bandar alexistogel

slot alexistogel

alexistogel bandar togel

alexistogel

alexistogel slot

alexistogel

daftar alexistogel

alexistogel online

rtp alexistogel

alexistogel slot

alexistogel gacor

link alternatif alexistogel

alexistogel login

alexistogel

alexistogel slot dana

agen togel online

bandar togel online

alexistogel rtp

alexistogel slot

alexistogel daftar

slot online dana

situs slot online

alexistogel

bandar togel online

slot online terpercaya

togel slot online

agen slot online gacor

rtp live slot online

bandar slot online

bandar slot online gacor

agen slot online

daftar bandar togel slot

bandar togel online

togel slot hari ini

link alternatif togel slot

rtp slot online gacor

slot online gacor

alexistogel terpercaya

rtp slot gacor

tips slot maxwin

togel slot gacor

prediksi togel

game slot gacor

trik slot online

prediksi togel jitu

daftar togel slot online

slot online gacor

trik slot bonus

prediksi togel

RTP LIVE

Bandar Toto Macau

Situs Slot Gacor

bandarbola855 resmi

bandarbola855 gacor

bandarbola855 slot

link bandarbola855

bandarbola855 rtp

bandarbola855 link

bandarbola855 bandar

bandarbola855

bandarbola855 slot

bandarbola855 terpercaya

bandarbola855 slot

bandarbola855 daftar

bandarbola855 link

bandarbola855

bandarbola855

bandarbola855

iosbet

iosbet

link iosbet

slot online iosbet

iosbet link login

slot iosbet

iosbet gacor

iosbet

slot iosbet

agen iosbet

bandar iosbet

iosbet

iosbet link

iosbet

iosbet

iosbet

iosbet

liatogel

login liatogel

liatogel totomacau

Slot Gacor