Author:
Anderson Paul,Lin Damon,Davidson Jean,Migler Theresa,Ho Iris,Koenig Cooper,Bittner Madeline,Kaplan Samuel,Paraiso Mayumi,Buhn Nasreen,Stokes Emily,Hunt Tony,Ropella Glen,Lotz Jeffrey
Abstract
AbstractLink prediction and entity resolution play pivotal roles in uncovering hidden relationships within networks and ensuring data quality in the era of heterogeneous data integration. This paper explores the utilization of large language models to enhance link prediction, particularly through knowledge graphs derived from transdisciplinary literature. Investigating zero-shot entity resolution techniques, we examine the impact of ontology-based and large language model approaches on the stability of link prediction results. Through a case study focusing on chronic lower back pain research, we analyze workflow decisions and their influence on prediction outcomes. Our research underscores the importance of robust methodologies in improving predictive accuracy and data integration across diverse domains.
Publisher
Cold Spring Harbor Laboratory