基于人工群智能的波动性资产预测

Louis B. Rosenberg, G. Willcox, Martti Palosuo, G. Mani
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引用次数: 1

摘要

群体智能(SI)是一种自然过程,已被证明可以提高许多社会物种(从鱼群到蜂群)的决策准确性。人工群体智能(ASI)是一种在网络化的人类群体中实现类似利益的技术。目前的研究测试ASI是否能使人类群体达到更准确的财务预测。具体来说,剑桥大学(Cambridge University)的一组MBA候选人被要求预测12种高度波动资产的三天价格变化,其中大多数是狂热(或迷因)股。在9周的时间里,人类预测者的平均投资回报率为+0.96%,当他们在人工群体中一起预测时,他们的投资回报率扩大到+2.3% (p=0.128)。此外,通过投资ASI每周提出的前三个买入建议来管理$ $5,000美元的资金,在为期9周的研究过程中产生了2.0%的投资回报率。这表明,基于群体的预测有可能提高金融交易员在现实世界中的表现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Forecasting of Volatile Assets using Artificial Swarm Intelligence
Swarm Intelligence (SI) is a natural process that has been shown to amplify decision-making accuracy in many social species, from schools of fish to swarms of bees. Artificial Swarm Intelligence (ASI) is a technology that enables similar benefits in networked human groups. The present research tests whether ASI enables human groups to reach more accurate financial forecasts. Specifically, a group of MBA candidates at Cambridge University was tasked with forecasting the three-day price change of 12 highly volatile assets, a majority of which were cult (or meme) stocks. Over a period of 9 weeks, human forecasters who averaged +0.96% ROI as individuals amplified their ROI to +2.3% when predicting together in artificial swarms (p=0.128). Further, a $\$5,000$ bankroll was managed by investing in the top three buy recommendations produced each week by ASI, which yielded a 2.0% ROI over the course of the 9-week study. This suggests that swarm-based forecasting has the potential to boost the performance of financial traders in real-world settings.
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