November 21, 2024
Conference Paper

SCITUNE: Aligning Large Language Models with Human-Curated Scientific Multimodal Instructions

Abstract

Instruction finetuning is a popular paradigm to align large language models (LLM) with human intent. Despite its popularity, this idea is less explored in improving the LLMs to align existing foundation models with scientific disciplines, concepts and goals. In this work, we present SciTune as a tuning framework to improve the ability of LLMs to follow scientific multimodal instructions. To test our methodology, we use a human-generated scientific instruction tuning dataset and train a large multimodal model LLaMA-SciTune that connects a vision encoder and LLM for science-focused visual and language understanding. LLaMA-SciTune significantly outperforms the state-of-the-art models in the generated figure types and captions in multiple scientific multimodal benchmarks. In comparison to the models that are fine-tuned with machine generated data only, LLaMA-SciTune surpasses human performance on average and in many sub-categories on the ScienceQA benchmark.

Published: November 21, 2024

Citation

Horawalavithana Y.S., S. Munikoti, I.B. Stewart, H.J. Kvinge, and K. Pazdernik. 2024. SCITUNE: Aligning Large Language Models with Human-Curated Scientific Multimodal Instructions. In Proceedings of the First Workshop on Natural Language Processing for Science (NLP4Science 2024), November 12-16, 2024, Miami, FL, 58–72. Stroudsburg, Pennsylvania:Association for Computational Linguistics. PNNL-SA-186641.

Research topics