학술논문

Experimenting with Large Language Models and vector embeddings in NASA SciX
Document Type
Working Paper
Source
Subject
Computer Science - Computation and Language
Astrophysics - Instrumentation and Methods for Astrophysics
Computer Science - Artificial Intelligence
Language
Abstract
Open-source Large Language Models enable projects such as NASA SciX (i.e., NASA ADS) to think out of the box and try alternative approaches for information retrieval and data augmentation, while respecting data copyright and users' privacy. However, when large language models are directly prompted with questions without any context, they are prone to hallucination. At NASA SciX we have developed an experiment where we created semantic vectors for our large collection of abstracts and full-text content, and we designed a prompt system to ask questions using contextual chunks from our system. Based on a non-systematic human evaluation, the experiment shows a lower degree of hallucination and better responses when using Retrieval Augmented Generation. Further exploration is required to design new features and data augmentation processes at NASA SciX that leverages this technology while respecting the high level of trust and quality that the project holds.
Comment: To appear in the proceedings of the 33th annual international Astronomical Data Analysis Software & Systems (ADASS XXXIII)