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EMD2FNN: A strategy combining empirical mode decomposition and factorization machine based neural network for stock market trend prediction

机译:EMD2FNN:结合经验模式分解和基于因子分解机的神经网络的股票趋势预测策略

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Stock market forecasting is a vital component of financial systems. However, the stock prices are highly noisy and non-stationary due to the fact that stock markets are affected by a variety of factors. Predicting stock market trend is usually subject to big challenges. The goal of this paper is to introduce a new hybrid, end-to-end approach containing two stages, the Empirical Mode Decomposition and Factorization Machine based Neural Network (EMD2FNN), to predict the stock market trend. To illustrate the method, we apply EMD2FNN to predict the daily closing prices from the Shanghai Stock Exchange Composite (SSEC) index, the National Association of Securities Dealers Automated Quotations (NASDAQ) index and the Standard & Poor's 500 Composite Stock Price Index (S&P 500), which respectively exhibit oscillatory, upward and downward patterns. The results are compared with predictions obtained by other methods, including the neural network (NN) model, the factorization machine based neural network (FNN) model, the empirical mode decomposition based neural network (EMD2NN) model and the wavelet de-noising-based back propagation (WDBP) neural network model. Under the same conditions, the experiments indicate that the proposed methods perform better than the other ones according to the metrics of Mean Absolute Error MAPE), Root Mean Square Error (RMSE) and Mean Absolute Percentage Error (MAPE). Furthermore, we compute the profitability with a simple long-short trading strategy to examine the trading performance of our models in the metrics of Average Annual Return (AAR), Maximum Drawdown (MD), Sharpe Ratio (SR) and AAR/MD. The performances in two different scenarios, when taking or not taking the transaction cost into consideration, are found economically significant. (C) 2018 Elsevier Ltd. All rights reserved.
机译:股票市场预测是金融系统的重要组成部分。但是,由于股票市场受多种因素影响,股票价格非常嘈杂且不稳定。预测股市趋势通常会遇到很大的挑战。本文的目的是介绍一种新的端到端混合方法,该方法包含两个阶段,即基于经验模式分解和基于因子分解机的神经网络(EMD2FNN),以预测股市趋势。为了说明该方法,我们使用EMD2FNN从上海证券交易所综合指数(SSEC),全国证券交易商自动报价协会(NASDAQ)指数和标准普尔500指数组合(S&P 500)预测每日收盘价。 ),分别显示出振荡,向上和向下的形态。将结果与通过其他方法获得的预测进行比较,包括神经网络(NN)模型,基于分解机的神经网络(FNN)模型,基于经验模式分解的神经网络(EMD2NN)模型和基于小波消噪的模型反向传播(WDBP)神经网络模型。在相同条件下,实验表明,根据均值绝对误差MAPE,均方根误差RMSE和均值百分比误差MAPE的度量,所提方法的性能优于其他方法。此外,我们使用简单的多空交易策略计算获利能力,以平均年收益率(AAR),最大跌幅(MD),夏普比率(SR)和AAR / MD的指标来检验模型的交易表现。在考虑或不考虑交易成本的情况下,发现在两种不同情况下的表现具有经济意义。 (C)2018 Elsevier Ltd.保留所有权利。

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