NASA Logo

NTRS

NTRS - NASA Technical Reports Server

The auto‑search feature has been disabled based on user feedback. Enter a search term/phrase and click “Search” to begin.

Back to Results
Discovering Research Areas in Dataset Applications Through Knowledge Graphs and Large Language ModelsScientific datasets are increasingly cited in peer-reviewed journal publications, facilitating easy access to research utilizing those datasets. Datasets undergo a life cycle where older versions of datasets are replaced by newer versions often due to improvements in data resolution, algorithms, and other factors. Unlike peer reviewed documents registered with a single Digital Unique Identifier (DOI), datasets can be updated over time and the newer version of the datasets are registered with a new DOI which is not necessarily linked to the previous version of the dataset. It is challenging when publications citing a dataset need to be traced over the entire life cycle of that dataset. We provide an innovative approach to link the dataset versions and publications using a knowledge graph (KG). KG can help to trace the dataset cited in publications over the entire dataset life cycle and shed light into dataset usage in various applied research areas. We fine-tuned the pretrained NASA IMPACTINDUS Large Language Model (LLM) on a set of labeled publications abstracts. Our results showed that 87% of the publications were classified into one of twenty applied research areas, while the remaining 13% were classified into non-applied research areas. By linking datasets to applied research areas through the KG and employing Global Change Master Directory(GCMD), a well-established controlled vocabulary of scientific keywords describing Earth science datasets, we contribute to a transparent and advanced search and discovery mechanism for datasets across the Earth data ecosystem. The integrated KG and LLM approach is now incorporated and operational in dataset publication management at one of NASA’s Earth science data archival centers.
Document ID
20240010838
Acquisition Source
Goddard Space Flight Center
Document Type
Conference Paper
Authors
Irina Gerasimov ORCID
(Adnet Systems (United States) Bethesda, Maryland, United States)
Armin Mehrabian ORCID
(Adnet Systems (United States) Bethesda, Maryland, United States)
Binita KC ORCID
(Adnet Systems (United States) Bethesda, Maryland, United States)
Jerome Alfred ORCID
(Adnet Systems (United States) Bethesda, Maryland, United States)
Michael P McGuire ORCID
(Towson University Towson, United States)
Date Acquired
August 21, 2024
Subject Category
Documentation and Information Science
Meeting Information
Meeting: Workshop on Generative AI and FAIR Principles in Science Communication (AI4SC-2024)
Location: Osaka
Country: JP
Start Date: September 17, 2024
Sponsors: Institute of Electrical and Electronics Engineers
Funding Number(s)
CONTRACT_GRANT: 80GSFC17C0003
CONTRACT_GRANT: 80GSFC23CA040
Distribution Limits
Public
Copyright
Portions of document may include copyright protected material.
Technical Review
NASA Peer Committee
Keywords
data provenance
data usage
data publication
dataset citation
dataset DOI
citation management
No Preview Available