A survey on the dataset, techniques, and evaluation metric used for abstractive text summarization

Dublin Core

Title

A survey on the dataset, techniques, and evaluation metric used for abstractive text summarization

Subject

Abstractive summarization
Attention mechanism
Automatic text summarization
Deep learning
Extractive summarization
Transformers

Description

Whenever there is too much information out there, it is desirable to summarize. If humans are trying to create the summary, it will take lot of time. Now to make the problem of summarizing information easier and more effortless one can automate the summarization process which can reduce the time taken in creating summary. This is called as automatic summarization. The two ways of summarization are extractive summarization and abstractive summarization. Extractive summarization and its applications have been the subject of extensive research and have received state of art solution. But abstractive summarization still is a progressive field as it is difficult to create abstractive summary as humans do. Also, it is still a question i.e., how to evaluate the quality of a summary? Therefore, this paper is a comprehensive survey on the dataset used with its details and statistics, analysis of various abstractive summarization techniques and important parameters for evaluating the quality of summary. Deep leaning based models have given new direction in this field. The author also focuses on problems and challenges faced in the generation of summary which are opening the future research scope in this domain.

Creator

Shivani Sharma1, Gaurav Aggarwal1, Bipin Kumar Rai2

Source

Journal homepage: http://telkomnika.uad.ac.id

Date

Feb 8, 2024

Contributor

PERI IRAWAN

Format

PDF

Language

ENGLISH

Type

TEXT

Files

Collection

Citation

Shivani Sharma1, Gaurav Aggarwal1, Bipin Kumar Rai2, “A survey on the dataset, techniques, and evaluation metric used for abstractive text summarization,” Repository Horizon University Indonesia, accessed January 12, 2026, https://repository.horizon.ac.id/items/show/10092.