Work place: NTT DATA Services, Winnipeg, Canada
E-mail: roopashree.gurumurthy@nttdata.com
Website:
Research Interests:
Biography
Roopashree Gurumurthy is a Senior Project Program Manager at NTT DATA Services. She is PMP certified, Prince 2 and a Scrum Master offering 15 years of experience and expertise in handling end-to-end development of projects from inception, requirement specs, planning, designing, implementation, configuration management, documentation and closure with cross-functional teams.
By Reshmi P Rajan Deepa V. Jose Roopashree Gurumoorthy
DOI: https://doi.org/10.5815/ijmecs.2023.06.05, Pub. Date: 8 Dec. 2023
Text summarization is the process of creating a shorter version of a longer text document while retaining its most important information. There have been a number of methods proposed for text summarization, but the existing method does not provide better results and has a problem with sequence classification. To overcome these limitations, a tangent search long short term memory with adaptive reinforcement transient learning-based extractive and abstractive document summarization is proposed in this manuscript. In abstractive phase, the features of the extractive summary are extracted and then the optimal features are selected by Adaptive Flamingo Optimization (AFO). With these optimal features, the abstractive summary is generated. The proposed method is implemented in python. For extractive text summarization, the proposed method attains 42.11% ROUGE-1 Score, 23.55% ROUGE-2 score and 41.05% ROUGE-L score using Gigaword. Additionally, 57.13% ROUGE-1 Score, 28.35% ROUGE-2 score and 52.85% ROUGE-L score using DUC-2004 dataset. For abstractive text summarization the proposed method attains 47.05% ROUGE-1 Score, 22.02% ROUGE-2 score and 48.96% ROUGE-L score using Gigaword. Also, 35.13% ROUGE-1 Score, 20.35% ROUGE-2 score and 35.25% ROUGE-L score using DUC-2004 dataset.
[...] Read more.Subscribe to receive issue release notifications and newsletters from MECS Press journals