基于自适应粒子群算法优化的LSSVR CARRX模型

Liyan Geng, Zhanfu Zhang
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引用次数: 2

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CARRX Model Based on LSSVR Optimized by Adaptive PSO
CARRX model measures financial volatility using range. To improve the forecasting ability of CARRX model, a new volatility forecasting method combining least squares support vector regression (LSSVR) with adaptive particle swarm optimization (APSO) is proposed to the traditional CARRX model. The non-parametric CARRX model is constructed by the LSSVR and APSO algorithm is designed to select the optimal parameters of LSSVR (LSSVR-APSO-CARRX). The results of application on China stock market show that the LSSVR-APSO-CARRX model is better than the LSSVR-CARRX and CARRX model in out-of-sample forecasting performance.
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