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非理性感知的人机协作:缓解跟单交易中的替代事实非理性

Irrationality-Aware Human Machine Collaboration: Mitigating Alterfactual Irrationality in Copy Trading

Information Systems Research · 2025
被引 4
人大 AFT50UTD24ABS 4*

中文导读

研究提出非理性感知的人机协作框架,帮助AI识别并纠正跟单交易中投资者的从众行为和身份偏见,使交易成功率比人类决策提高49%,比此前AI方法提高10.2%。

Abstract

Artificial intelligence (AI) algorithms are trained on human-generated data, but what if that data reflects irrational human decision making? To tackle this challenge, Shen et al. developed a new irrationality-aware human-machine collaboration (IA-HMC) framework, designed to help AI recognize and adapt to human irrationality. A key concept introduced in this framework is “alterfactual irrationality”—a term used to describe human decisions influenced by irrelevant alternatives. The researchers applied this idea to copy trading, a popular investment strategy where everyday investors (followers) mimic the trades of expert traders. They identified two major irrational behaviors affecting followers: herding behavior—blindly following others without independent analysis; and identity bias—making investment choices based on who made the trade rather than its actual merit. By developing irrationality-aware machine learning methods, the study showed that AI can help followers make better trading decisions. Their approach led to a 49% improvement in success rates compared to human decisions alone and a 10.2% improvement over previous AI-driven methods. This research presents an innovative approach in human-AI collaboration, showing that for AI to truly align with human needs, it must first learn to account for and correct human irrationality.

人工智能行为经济学金融科技人机协作