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Open-FinLLMs: Open Multimodal Large Language Models for Financial Applications

Author

Listed:
  • Qianqian Xie
  • Dong Li
  • Mengxi Xiao
  • Zihao Jiang
  • Ruoyu Xiang
  • Xiao Zhang
  • Zhengyu Chen
  • Yueru He
  • Weiguang Han
  • Yuzhe Yang
  • Shunian Chen
  • Yifei Zhang
  • Lihang Shen
  • Daniel Kim
  • Zhiwei Liu
  • Zheheng Luo
  • Yangyang Yu
  • Yupeng Cao
  • Zhiyang Deng
  • Zhiyuan Yao
  • Haohang Li
  • Duanyu Feng
  • Yongfu Dai
  • VijayaSai Somasundaram
  • Peng Lu
  • Yilun Zhao
  • Yitao Long
  • Guojun Xiong
  • Kaleb Smith
  • Honghai Yu
  • Yanzhao Lai
  • Min Peng
  • Jianyun Nie
  • Jordan W. Suchow
  • Xiao-Yang Liu
  • Benyou Wang
  • Alejandro Lopez-Lira
  • Jimin Huang
  • Sophia Ananiadou

Abstract

Large language models (LLMs) have advanced financial applications, yet they often lack sufficient financial knowledge and struggle with tasks involving multi-modal inputs like tables and time series data. To address these limitations, we introduce \textit{Open-FinLLMs}, a series of Financial LLMs. We begin with FinLLaMA, pre-trained on a 52 billion token financial corpus, incorporating text, tables, and time-series data to embed comprehensive financial knowledge. FinLLaMA is then instruction fine-tuned with 573K financial instructions, resulting in FinLLaMA-instruct, which enhances task performance. Finally, we present FinLLaVA, a multimodal LLM trained with 1.43M image-text instructions to handle complex financial data types. Extensive evaluations demonstrate FinLLaMA's superior performance over LLaMA3-8B, LLaMA3.1-8B, and BloombergGPT in both zero-shot and few-shot settings across 19 and 4 datasets, respectively. FinLLaMA-instruct outperforms GPT-4 and other Financial LLMs on 15 datasets. FinLLaVA excels in understanding tables and charts across 4 multimodal tasks. Additionally, FinLLaMA achieves impressive Sharpe Ratios in trading simulations, highlighting its robust financial application capabilities. We will continually maintain and improve our models and benchmarks to support ongoing innovation in academia and industry.

Suggested Citation

  • Qianqian Xie & Dong Li & Mengxi Xiao & Zihao Jiang & Ruoyu Xiang & Xiao Zhang & Zhengyu Chen & Yueru He & Weiguang Han & Yuzhe Yang & Shunian Chen & Yifei Zhang & Lihang Shen & Daniel Kim & Zhiwei Liu, 2024. "Open-FinLLMs: Open Multimodal Large Language Models for Financial Applications," Papers 2408.11878, arXiv.org.
  • Handle: RePEc:arx:papers:2408.11878
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    References listed on IDEAS

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    1. Yinheng Li & Shaofei Wang & Han Ding & Hang Chen, 2023. "Large Language Models in Finance: A Survey," Papers 2311.10723, arXiv.org, revised Jul 2024.
    2. Qianqian Xie & Weiguang Han & Yanzhao Lai & Min Peng & Jimin Huang, 2023. "The Wall Street Neophyte: A Zero-Shot Analysis of ChatGPT Over MultiModal Stock Movement Prediction Challenges," Papers 2304.05351, arXiv.org, revised Apr 2023.
    3. Pekka Malo & Ankur Sinha & Pekka Korhonen & Jyrki Wallenius & Pyry Takala, 2014. "Good debt or bad debt: Detecting semantic orientations in economic texts," Journal of the Association for Information Science & Technology, Association for Information Science & Technology, vol. 65(4), pages 782-796, April.
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