Novykov Volodymyr, Bilson Christopher, Gepp Adrian, Harris Geoff, Vanstone Bruce James
Bond Business School, Bond University, Gold Coast, QLD Australia.
Bangor Business School, Bangor University, Wales, UK.
Neural Comput Appl. 2023;35(2):1581-1605. doi: 10.1007/s00521-022-07792-3. Epub 2022 Oct 1.
The purpose of this work is to compare predictive performance of neural networks trained using the relatively novel technique of training single hidden layer feedforward neural networks (SFNN), called Extreme Learning Machine (ELM), with commonly used backpropagation-trained recurrent neural networks (RNN) as applied to the task of financial market prediction. Evaluated on a set of large capitalisation stocks on the Australian market, specifically the components of the ASX20, ELM-trained SFNNs showed superior performance over RNNs for individual stock price prediction. While this conclusion of efficacy holds generally, long short-term memory (LSTM) RNNs were found to outperform for a small subset of stocks. Subsequent analysis identified several areas of performance deviations which we highlight as potentially fruitful areas for further research and performance improvement.
这项工作的目的是比较使用相对新颖的训练单隐藏层前馈神经网络(SFNN)的技术(称为极限学习机(ELM))训练的神经网络与常用的反向传播训练的递归神经网络(RNN)在金融市场预测任务中的预测性能。在澳大利亚市场上一组大盘股(具体为澳大利亚证券交易所20指数的成分股)上进行评估时,经ELM训练的SFNN在个股价格预测方面表现优于RNN。虽然这一有效性结论总体上成立,但发现长短期记忆(LSTM)RNN在一小部分股票上表现更优。后续分析确定了几个性能偏差领域,我们将其作为进一步研究和性能改进的潜在富有成果的领域加以强调。