用和谐搜索算法训练单个乘法神经元预测标准普尔500指数-广泛的性能评估

C. Worasucheep
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引用次数: 5

摘要

和声搜索是一种较新的连续优化元启发式算法,其概念模仿了音乐即兴创作的过程。本文将一种改进的和声搜索算法——自适应音调调整和声搜索(HSAPA)应用于股票市场指数的预测。应用HSAPA对单乘法神经元的权重和偏差进行优化,用于预测标准普尔500指数。使用不同规模的数据集、训练比例和开始日期(从1990年到2009年,总共108个测试集)对其预测性能进行了广泛的评估。将预测结果与标准的反向传播学习方法和基于对立的差分进化算法(一种非常高效且被广泛接受的进化算法)进行了比较。用预测结果的平均绝对百分比误差来衡量,结果表明HSAPA在股票市场指数预测中是很有前景的。
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Training a single multiplicative neuron with a harmony search algorithm for prediction of S&P500 index - An extensive performance evaluation
Harmony Search is a relatively new meta-heuristic algorithm for continuous optimization, in which its concept imitates the process of music improvisation. This paper applied an improved harmony search algorithm called Harmony Search with Adaptive Pitch Adjustment (HSAPA) for prediction of stock market index. HSAPA is applied to optimize the weights and biases of Single Multiplicative Neuron for the prediction of daily S&P500 index. Its prediction performance has been extensively evaluated using various sizes of dataset, training proportions, and beginning dates spanning from 1990 to 2009, a totaling of 108 test sets. The prediction results are compared to those of standard Back Propagation learning method and Opposition-based Differential Evolution algorithm, a very efficient and widely-accepted evolutionary algorithm. The results demonstrate that HSAPA is very promising for the stock market index prediction, measured with the mean absolute percentage error of the prediction results.
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