Alpha-GPT 2.0: Human-in-the-Loop AI for Quantitative Investment
- URL: http://arxiv.org/abs/2402.09746v1
- Date: Thu, 15 Feb 2024 06:52:42 GMT
- Title: Alpha-GPT 2.0: Human-in-the-Loop AI for Quantitative Investment
- Authors: Hang Yuan, Saizhuo Wang, Jian Guo
- Abstract summary: Recently, we introduced a new paradigm for alpha mining in the realm of quantitative investment, developing a new interactive alpha mining system framework, Alpha-GPT.
This system is centered on iterative Human-AI interaction based on large language models, introducing a Human-in-the-Loop approach to alpha discovery.
In this paper, we present the next-generation Alpha-GPT 2.0 footnoteDraft. Work in progress, a quantitative investment framework that further encompasses crucial modeling and analysis phases in quantitative investment.
- Score: 10.11013017172889
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Recently, we introduced a new paradigm for alpha mining in the realm of
quantitative investment, developing a new interactive alpha mining system
framework, Alpha-GPT. This system is centered on iterative Human-AI interaction
based on large language models, introducing a Human-in-the-Loop approach to
alpha discovery. In this paper, we present the next-generation Alpha-GPT 2.0
\footnote{Draft. Work in progress}, a quantitative investment framework that
further encompasses crucial modeling and analysis phases in quantitative
investment. This framework emphasizes the iterative, interactive research
between humans and AI, embodying a Human-in-the-Loop strategy throughout the
entire quantitative investment pipeline. By assimilating the insights of human
researchers into the systematic alpha research process, we effectively leverage
the Human-in-the-Loop approach, enhancing the efficiency and precision of
quantitative investment research.
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