Grey-Box Methods in Forecasting Financial Markets

J. Sørlie
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Abstract

We first present methods of data analysis in defining stochastic mathematical models suitable for use in forecasting financial markets. With the purpose of multi-period portfolio selection via model predictive control, we focus on input-output model structures. By capturing cause-and-effect dynamic behaviors these models exhibit improved fidelity in simulation. Second we present a probabilistic approach for augmenting the identified models with auxiliary speculative/subjective information derived from analyst and regulatory reports. The technique is an application of the Kalman filter and can be interpreted as a logical extension — to a multi-period framework — of the well-known single-period Black-Litterman approach from portfolio optimization.
预测金融市场的灰盒方法
我们首先提出了数据分析的方法,以定义适合用于预测金融市场的随机数学模型。以模型预测控制的多周期投资组合选择为目的,重点研究了输入-输出模型结构。通过捕获因果动态行为,这些模型在模拟中表现出更高的保真度。其次,我们提出了一种概率方法,用来自分析师和监管报告的辅助推测/主观信息来增强已确定的模型。该技术是卡尔曼滤波的一种应用,可以解释为投资组合优化中著名的单周期Black-Litterman方法的逻辑扩展-到多周期框架。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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