
Premium content
Access to this content requires a subscription. You must be a premium user to view this content.

workshop paper
OSX at Context24: How Well Can GPT Tackle Contexualizing Scientific Figures and Tables
keywords:
text-image retrieval
Identifying the alignment between different parts of a scientific paper is fundamental to scholarly document processing. In the Context24 shared task, participants are given a scientific claim and asked to identify (1) key figures or tables that support the claim and (2) methodological details. While employing a supervised approach to train models on task-specific data is a prevailing strategy for both subtasks, such an approach is not feasible for low-resource domains. Therefore, this paper introduces data-free systems supported by Large Language Models. We propose systems based on GPT-4o and GPT-4-turbo for each task. The experimental results reveal the zero-shot capabilities of GPT-4* in both tasks.