← Back to Articles
⚠️
IEEE Published Article
This article is published by IEEE and the copyright belongs to IEEE. Please click here to access the full text.

The Impact of Varying Knowledge on Question-Answering System

View PDF

Abstract

Scale up the large language models to store vast amounts of knowledge within their parameters incur higher costs and training times. Thus, in this study, we aim to examine the effects of language models enhancing external knowledge and compare the performance of extractive and abstractive generation tasks in building the question-answering system. To ensure consistency in our evaluations, we modified the MS MARCO and MASH-QA datasets by filtering irrelevant support documents and enhancing contextual relevance by mapping the input question to the closest supported documents in our database setup. Finally, we materiality assess the performance in the health domain, our experience presents a promising result not only with information retrieval but also with retrieval augmentation tasks aimed at improving performance for future work.

Keywords

Extractive generation Abstractive generation Knowledge-Based Question-Answering

Authors

A. N. T. Ha
Department of Information Technology, FPT University, Ho Chi Minh City, Vietnam
T. N. Quoc
Department of Information Technology, FPT University, Ho Chi Minh City, Vietnam
T. N. Van
Pythera AI
H. P. Trung
Pythera AI
V. T. Hoang
Faculty of Information Technology, Ho Chi Minh City Open University, Ho Chi Minh City, Vietnam
T. Le-Viet
Faculty of Information Technology, Ho Chi Minh City Open University, Ho Chi Minh City, Vietnam

Publication Details

Type
proceedings
Publisher
IEEE
Volume
Issue
ISSN
Citations
0
Views
0