A New Scheme for Proactive Risk Management in Stock Market

Akihiko Takahashi, Soichiro Takahashi
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Abstract

This paper proposes a novel state-space approach to explain stock market dynamics driven by different types of trading, which leads to a new promising scheme for proactive risk management in financial investment. Particularly, it is assumed that the current price changes are formulated through daily trading by multiple types of traders, each of whom follows a specific investment strategy based on technical indicators and a fuzzy logic using past data of stock prices, volumes and yield curves. Moreover, the current price changes are represented by a linear combination of those multiple trading types, where the coefficients corresponding with the size of impact on the price changes are regarded as time-varying state variables to be sequentially estimated under a state-space framework. Thereby, this work develops a new factor decomposition method on price changes from a perspective of different traders' demand and supply to analyze the current situations and potential risks in financial markets.

In empirical experiments, it is shown that the implementation of particle filtering algorithm makes it possible to replicate market price changes. Further, new signals based on the estimated states are developed, which are applied to proactive risk management in financial investment. Especially, it has been found that the demands of yield curve-based traders subtracting those of trend-followers could be a promising signal of stock market crashes, which has successfully enhanced simple buy-and-hold strategy of SP, as well as constant proportion strategies.
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股票市场前瞻性风险管理新方案
本文提出了一种新的状态空间方法来解释由不同类型的交易驱动的股票市场动态,从而为金融投资中的主动风险管理提供了一种新的有前途的方案。特别是,假设当前的价格变化是由多种类型的交易者通过日常交易制定的,每个交易者都遵循基于技术指标的特定投资策略和使用过去股票价格,交易量和收益率曲线数据的模糊逻辑。此外,当前的价格变化由多种交易类型的线性组合来表示,其中将对价格变化的影响大小对应的系数视为时变状态变量,在状态空间框架下进行顺序估计。因此,本文提出了一种新的从不同交易者的需求和供给角度分析价格变化的因素分解方法,以分析金融市场的现状和潜在风险。实证实验表明,粒子滤波算法的实现使市场价格变化的复制成为可能。在此基础上,提出了基于估计状态的新信号,并将其应用于金融投资中的主动风险管理。特别是发现基于收益率曲线的交易者的需求减去趋势追随者的需求可能是股市崩盘的一个有希望的信号,这成功地增强了简单的买入并持有SP策略,以及恒比例策略。
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