混合果蝇ELM框架预测股指价格走势

S. Samal, Rajashree Dash
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引用次数: 1

摘要

由于数据中包含波动性、非线性和突发性变化等复杂因素,预测金融时间序列数据的上升或下降方向是非常有挑战性的。这项任务需要一个可靠的、鲁棒的预测模型,该模型不仅可以准确预测方向,而且比传统算法更快。极限学习机(ELM)由于其极快的训练速度和对新数据的卓越适应性,是目前此类任务的领先算法之一。本研究提出了一种结合果蝇优化和极限学习机(FFO-ELM)的混合框架来预测股票指数的未来走势。此外,将所提出的FFO-ELM框架与基于差分进化的ELM (DE-ELM)、基于粒子群优化的ELM (PSO-ELM)和单例ELM进行性能比较。利用BSE SENSEX和NIFTY 50股票指数进行实证分析,结果表明,与其他检验模型相比,FFO-ELM模型在准确率、fl-score和g-mean方面表现相对较好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Hybrid Fruit Fly ELM Framework for Stock Index Price Movement Prediction
Predicting the upward or downward direction of financial time-series data is very challenging due to complex factors involved in the data such as volatility, non-linearity, and sudden variations. This task requires a reliable and robust prediction model which can not only predict the direction accurately but also be faster than traditional algorithms. Extreme learning machine (ELM) is among the leading algorithms for such task at hand due to its extremely fast training and superior adaptation to new data. This study proposes a hybrid framework integrating fruit fly optimization with extreme learning machine (FFO-ELM) to predict the forthcoming movements of stock indices. Additionally, the performance of the advocated FFO-ELM framework is compared with differential evolution-based ELM (DE-ELM), particle swarm optimization-based ELM (PSO-ELM) and singleton ELM. The empirical analysis has been done utilizing BSE SENSEX and NIFTY 50 stock indices and the outcomes indicated that the FFO-ELM model performed comparatively better in terms of accuracy, fl-score, and g-mean in contrast with other inspected models.
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