状态空间自适应模糊建模方法在金融投资中的应用

M. Nakano, Akihiko Takahashi, Soichiro Takahashi
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引用次数: 0

摘要

本文提出了一种动态环境下自适应模糊建模的状态空间方法,通过贝叶斯滤波将模型参数包括模型结构本身作为状态变量进行顺序学习。特别地,我们的方法将状态转换指定为均值回归过程,其目的是将现有的最先进的学习技术纳入和扩展如下:首先,通过将一些现有的学习方法应用于训练周期来确定模型参数的均值回归水平。接下来,对测试数据进行过滤实现,使参数能够在线估计,其中根据获得的可靠学习结果自适应地调整每个新数据到达的估计。本文具体设计了金融投资的Takagi-Sugeno- Kang模糊模型,该模型参数遵循自回归过程,均值回归水平由粒子群优化决定。由于存在基于蒙特卡罗模拟的称为粒子滤波的算法,我们的方法适用于包括非线性在内的相当一般的设置,这实际上出现在我们的投资问题中。然后,通过证券价格数据的样本外数值实验,成功地验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
State Space Approach to Adaptive Fuzzy Modeling: Application to Financial Investment
This paper proposes a new state space approach to adaptive fuzzy modeling under the dynamic environment, where Bayesian filtering sequentially learns the model parameters including model structures themselves as state variables. In particular, our approach specifies the state transitions as meanreversion processes, which intends to incorporate and extend the established state-of-art learning techniques as follows: First, the mean-reversion levels of model parameters are determined by applying some existing learning method to a training period. Next, filtering implementation over test data enables on-line estimation of the parameters, where the estimates are adaptively tuned for each new data arrival based on the obtained reliable learning result. In this work, we concretely design a Takagi-Sugeno- Kang fuzzy model for financial investment, whose parameters follow autoregressive processes with the mean-reversion levels decided by particle swarm optimization. Since there exist Monte Carlo simulation-based algorithms called particle filtering, our methodology is applicable to a quite general setting including non-linearity, which actually arises in our investment problem. Then, an out-of-sample numerical experiment with security price data successfully demonstrates its effectiveness.
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