Research on WNN modeling for gold price forecasting based on improved artificial bee colony algorithm

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Abstract

Gold price forecasting has been a hot issue in economics recently. In this work, wavelet neural network (WNN) combined with a novel artificial bee colony (ABC) algorithm is proposed for this gold price forecasting issue. In this improved algorithm, the conventional roulette selection strategy is discarded. Besides, the convergence statuses in a previous cycle of iteration are fully utilized as feedback messages to manipulate the searching intensity in a subsequent cycle. Experimental results confirm that this new algorithm converges faster than the conventional ABC when tested on some classical benchmark functions and is effective to improve modeling capacity of WNN regarding the gold price forecasting scheme. © 2014 Bai Li.

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APA

Li, B. (2014). Research on WNN modeling for gold price forecasting based on improved artificial bee colony algorithm. Computational Intelligence and Neuroscience, 2014. https://doi.org/10.1155/2014/270658

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