Evaluating the Potential of Leading Large Language Models in Reasoning Biology Questions (2311.07582v1)
Abstract: Recent advances in LLMs have presented new opportunities for integrating AGI into biological research and education. This study evaluated the capabilities of leading LLMs, including GPT-4, GPT-3.5, PaLM2, Claude2, and SenseNova, in answering conceptual biology questions. The models were tested on a 108-question multiple-choice exam covering biology topics in molecular biology, biological techniques, metabolic engineering, and synthetic biology. Among the models, GPT-4 achieved the highest average score of 90 and demonstrated the greatest consistency across trials with different prompts. The results indicated GPT-4's proficiency in logical reasoning and its potential to aid biology research through capabilities like data analysis, hypothesis generation, and knowledge integration. However, further development and validation are still required before the promise of LLMs in accelerating biological discovery can be realized.
- Xinyu Gong (21 papers)
- Jason Holmes (19 papers)
- Yiwei Li (107 papers)
- Zhengliang Liu (91 papers)
- Qi Gan (6 papers)
- Zihao Wu (100 papers)
- Jianli Zhang (17 papers)
- Yusong Zou (2 papers)
- Yuxi Teng (1 paper)
- Tian Jiang (26 papers)
- Hongtu Zhu (81 papers)
- Wei Liu (1135 papers)
- Tianming Liu (161 papers)
- Yajun Yan (10 papers)