Reducing the Risk of Investing in Stocks

Laura Núñez-Letamendia, Yiyi Jiang
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Abstract

Although financial literature presents ambiguous evidence about the predicting value of fundamental and technical variables in stock markets, we find that evolving trading models based on fundamental variables substantially reduce the risk of investing in stocks. This reduction is so generous that the risk-adjusted return obtained following these fundamental variables to trade individual stocks is superior to that obtained by the passive investing in the same individual stocks. However the technical indicators we analyze do not show any predicting value neither in terms of return or risk. We observe the dynamics of individual stock prices’ return and risk in a new framework, the Adaptive Market Hypothesis (AMH) proposed recently by Lo (2004). Using this framework, we examine if there is room to improve investment strategies when adapting them to the potential changing conditions of financial markets or to the investors’ learning process. This adaptation is carried out by quantitative adaptive models driven by evolutionary algorithms (genetic algorithms) that update, over time, the threshold values for fundamental and technical indicators. We find that adaptation improves the risk-adjusted return of investment strategies. We test our trading models using a large sample of companies: non-financial firms with data available in Compustat database which have been listed in the S&P 500 for at least two quarters during the period 1976 - 2006. Our sample consists of 332,700 firm-quarterly observations for fundamental trading systems and 7,157,320 firm-daily observations for technical trading systems. Our models are run using parallel computation executed on 81 computers with a global capacity of 225 GFLOPS or (225x109) FLOPS (floating point operations per second) at the Computational Laboratory of the IT School of Madrid’s Complutense University.
降低投资股票的风险
尽管金融文献对股票市场的基本面变量和技术变量的预测价值提出了模糊的证据,但我们发现基于基本面变量的不断发展的交易模型大大降低了投资股票的风险。这种减少是如此之大,以至于按照这些基本变量交易个股所获得的风险调整收益优于被动投资同一个股所获得的收益。然而,我们分析的技术指标无论在回报还是风险方面都没有显示出任何预测价值。我们在Lo(2004)最近提出的适应性市场假说(AMH)框架下观察个股价格的收益和风险的动态。利用这一框架,我们考察了在使投资策略适应金融市场的潜在变化条件或投资者的学习过程时,是否有改进的空间。这种适应是由进化算法(遗传算法)驱动的定量适应模型进行的,随着时间的推移,这些模型会更新基本指标和技术指标的阈值。我们发现,适应性提高了投资策略的风险调整收益。我们使用大量公司样本来测试我们的交易模型:非金融公司,数据可在Compustat数据库中获得,这些公司在1976年至2006年期间至少有两个季度被列入标准普尔500指数。我们的样本包括332,700家公司对基本交易系统的季度观察和7,157,320家公司对技术交易系统的日常观察。我们的模型是在马德里康普顿斯大学IT学院计算实验室的81台计算机上使用并行计算运行的,这些计算机的全球容量为225 GFLOPS或(225 × 109) FLOPS(每秒浮点运算)。
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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