Chan Phooi M'ng Jacinta, Mehralizadeh Mohammadali
Faculty of Business and Accountancy, University of Malaya, Kuala Lumpur, 50603, Malaysia.
PLoS One. 2016 Jun 1;11(6):e0156338. doi: 10.1371/journal.pone.0156338. eCollection 2016.
The motivation behind this research is to innovatively combine new methods like wavelet, principal component analysis (PCA), and artificial neural network (ANN) approaches to analyze trade in today's increasingly difficult and volatile financial futures markets. The main focus of this study is to facilitate forecasting by using an enhanced denoising process on market data, taken as a multivariate signal, in order to deduct the same noise from the open-high-low-close signal of a market. This research offers evidence on the predictive ability and the profitability of abnormal returns of a new hybrid forecasting model using Wavelet-PCA denoising and ANN (named WPCA-NN) on futures contracts of Hong Kong's Hang Seng futures, Japan's NIKKEI 225 futures, Singapore's MSCI futures, South Korea's KOSPI 200 futures, and Taiwan's TAIEX futures from 2005 to 2014. Using a host of technical analysis indicators consisting of RSI, MACD, MACD Signal, Stochastic Fast %K, Stochastic Slow %K, Stochastic %D, and Ultimate Oscillator, empirical results show that the annual mean returns of WPCA-NN are more than the threshold buy-and-hold for the validation, test, and evaluation periods; this is inconsistent with the traditional random walk hypothesis, which insists that mechanical rules cannot outperform the threshold buy-and-hold. The findings, however, are consistent with literature that advocates technical analysis.
本研究的动机是创新性地结合小波、主成分分析(PCA)和人工神经网络(ANN)等新方法,以分析当今日益艰难且波动的金融期货市场中的交易情况。本研究的主要重点是通过对作为多变量信号的市场数据进行增强去噪处理来促进预测,以便从市场的开盘-最高-最低-收盘信号中扣除相同的噪声。本研究提供了关于一种新的混合预测模型(使用小波-PCA去噪和ANN,名为WPCA-NN)对2005年至2014年香港恒生期货、日本日经225期货、新加坡MSCI期货、韩国KOSPI 200期货和台湾台指期货的期货合约的预测能力和异常回报盈利能力的证据。使用一系列由相对强弱指数(RSI)、指数平滑异同移动平均线(MACD)、MACD信号线、快速随机指标(Stochastic Fast %K)、慢速随机指标(Stochastic Slow %K)、随机指标%D和终极振荡指标组成的技术分析指标,实证结果表明,在验证期、测试期和评估期内,WPCA-NN的年平均回报率超过了买入并持有阈值;这与传统的随机游走假说不一致,传统假说坚持认为机械规则无法超越买入并持有阈值。然而,这些发现与主张技术分析的文献一致。