利用滑模算法和差分进化训练的混合动态神经网络预测金融时间序列及其波动率

R. Bisoi, P. Dash
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引用次数: 9

摘要

本文提出了一个动态神经网络(DNN)和一个新的计算效率高的函数链接人工神经网络(CEFLANN)组合,优化了差分进化(DE),以预测两个重要的印度股票市场的金融时间序列,如股票价格指数和股票回报波动,即信实工业有限公司(RIL)和NIFTY提前一天到一个月。DNN包括一组一阶IIR滤波器,用于处理过去的输入和它们的功能扩展,其权重使用滑模策略进行调整,该策略以其对输入中的混沌变化的快速收敛和鲁棒性而闻名。我们进行了大量的计算机模拟来同时预测股票市场指数和收益波动,并观察到与更复杂的神经结构相比,简单的基于iir的DNN-FLANN模型与DE混合产生了更好的预测精度。
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Prediction of financial time series and its volatility using a hybrid dynamic neural network trained by sliding mode algorithm and differential evolution
A dynamic neural network (DNN) and a new computationally efficient functional link artificial neural network (CEFLANN) combination optimised with differential evolution (DE) is presented in this paper to predict financial time series like stock price indices and stock return volatilities of two important Indian stock markets, namely the Reliance Industries Limited (RIL), and NIFTY from one day ahead to one month in advance. The DNN comprises a set of 1st order IIR filters for processing the past inputs and their functional expansions and its weights are adjusted using a sliding mode strategy known for its fast convergence and robustness with respect to chaotic variations in the inputs. Extensive computer simulations are carried out to predict simultaneously the stock market indices and return volatilities and it is observed that the simple IIR-based DNN-FLANN model hybridised with DE produces better forecasting accuracies in comparison to the more complicated neural architectures.
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