Department of Management, Society and Communication, Copenhagen Business School, Frederiksberg, Denmark.
Department of Management, Politics and Philosophy, Copenhagen Business School, Frederiksberg, Denmark.
Br J Sociol. 2021 Sep;72(4):1015-1029. doi: 10.1111/1468-4446.12880. Epub 2021 Jul 27.
Uncertainty about market developments and their implications characterize financial markets. Increasingly, machine learning is deployed as a tool to absorb this uncertainty and transform it into manageable risk. This article analyses machine-learning-based uncertainty absorption in financial markets by drawing on 182 interviews in the finance industry, including 45 interviews with informants who were actively applying machine-learning techniques to investment management, trading, or risk management problems. We argue that while machine-learning models are deployed to absorb financial uncertainty, they also introduce a new and more profound type of uncertainty, which we call critical model uncertainty. Critical model uncertainty refers to the inability to explain how and why the machine-learning models (particularly neural networks) arrive at their predictions and decisions-their uncertainty-absorbing accomplishments. We suggest that the dialectical relation between machine-learning models' uncertainty absorption and multiplication calls for further research in the field of finance and beyond.
金融市场的特点是对市场发展及其影响的不确定性。机器学习越来越多地被用作一种工具,以吸收这种不确定性,并将其转化为可管理的风险。本文通过对金融行业的 182 次访谈进行分析,包括对 45 名积极将机器学习技术应用于投资管理、交易或风险管理问题的受访者的访谈,研究了基于机器学习的金融市场不确定性吸收。我们认为,虽然机器学习模型被用来吸收金融不确定性,但它们也引入了一种新的、更深刻的不确定性,我们称之为关键模型不确定性。关键模型不确定性是指无法解释机器学习模型(特别是神经网络)如何以及为何得出其预测和决策——它们的不确定性吸收成果。我们认为,机器学习模型的不确定性吸收和倍增之间的辩证关系需要在金融领域及其他领域进行进一步的研究。