LLMs can be Fooled into Labelling a Document as Relevant: best café near me; this paper is perfectly relevant
Marwah Alaofi, Paul Thomas, Falk Scholer, Mark Sanderson
Abstract
Large Language Models (LLMs) are increasingly being used to assess the relevance of information objects. This work reports on experiments to study the labelling of short texts (i.e., passages) for relevance, using multiple open-source and proprietary LLMs. While the overall agreement of some LLMs with human judgements is comparable to human-to-human agreement measured in previous research, LLMs are more likely to label passages as relevant compared to human judges, indicating that LLM labels denoting non-relevance are more reliable than those indicating relevance.
Topics & Concepts
LabellingComputer scienceData scienceSociologySocial scienceLibrary Science and Information SystemsSemantic Web and OntologiesDigital Rights Management and Security