Effectiveness of Uncertainty Consideration in Neural-Network-Based Financial Forecasting

Iwao Maeda, Hiroyasu Matsushima, Hiroki Sakaji, K. Izumi, David deGraw, Atsuo Kato, Michiharu Kitano
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引用次数: 2

Abstract

Accurate prediction of financial markets is considered one of the most difficult problems due to the nature of its complexity, influenceability, and nonstationarity. Recent financial forecasting applications using neural networks typically have not taken the predictive uncertainty into consideration. Without proper consideration of predictive uncertainty, such approaches may lead to unintended investment losses. Therefore, consideration of predictive uncertainty in neural network-based financial forecasting should lead to improved investment decision-making. In this study, the effectiveness of uncertainty consideration in neural network-based financial forecasting was verified through a simulated investment portfolio. We show that ensemble and Bayesian neural network models are effective in realizing more stable investment outcomes.
基于神经网络的财务预测中不确定性考虑的有效性
由于金融市场的复杂性、影响力和非平稳性,准确预测金融市场被认为是最困难的问题之一。最近使用神经网络的金融预测应用通常没有考虑预测的不确定性。如果没有适当考虑预测的不确定性,这种方法可能会导致意外的投资损失。因此,在基于神经网络的财务预测中考虑预测的不确定性,将有助于改进投资决策。在本研究中,通过模拟投资组合验证了不确定性考虑在基于神经网络的财务预测中的有效性。研究表明,集成和贝叶斯神经网络模型在实现更稳定的投资结果方面是有效的。
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