Elitist-opposition-based artificial electric field algorithm for higher-order neural network optimization and financial time series forecasting

IF 6.9 1区 经济学 Q1 BUSINESS, FINANCE Financial Innovation Pub Date : 2024-01-02 DOI:10.1186/s40854-023-00534-x
Sarat Chandra Nayak, Satchidananda Dehuri, Sung-Bae Cho
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Abstract

This study attempts to accelerate the learning ability of an artificial electric field algorithm (AEFA) by attributing it with two mechanisms: elitism and opposition-based learning. Elitism advances the convergence of the AEFA towards global optima by retaining the fine-tuned solutions obtained thus far, and opposition-based learning helps enhance its exploration ability. The new version of the AEFA, called elitist opposition leaning-based AEFA (EOAEFA), retains the properties of the basic AEFA while taking advantage of both elitism and opposition-based learning. Hence, the improved version attempts to reach optimum solutions by enabling the diversification of solutions with guaranteed convergence. Higher-order neural networks (HONNs) have single-layer adjustable parameters, fast learning, a robust fault tolerance, and good approximation ability compared with multilayer neural networks. They consider a higher order of input signals, increased the dimensionality of inputs through functional expansion and could thus discriminate between them. However, determining the number of expansion units in HONNs along with their associated parameters (i.e., weight and threshold) is a bottleneck in the design of such networks. Here, we used EOAEFA to design two HONNs, namely, a pi-sigma neural network and a functional link artificial neural network, called EOAEFA-PSNN and EOAEFA-FLN, respectively, in a fully automated manner. The proposed models were evaluated on financial time-series datasets, focusing on predicting four closing prices, four exchange rates, and three energy prices. Experiments, comparative studies, and statistical tests were conducted to establish the efficacy of the proposed approach.
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基于litist-opposition的人工电场算法用于高阶神经网络优化和金融时间序列预测
本研究试图通过精英学习和对立学习两种机制来加速人工电场算法(AEFA)的学习能力。精英机制通过保留迄今为止获得的微调解来推动人工电场算法向全局最优收敛,而基于对立的学习机制则有助于增强其探索能力。新版本的 AEFA 被称为基于精英反对倾斜的 AEFA(EOAEFA),它保留了基本 AEFA 的特性,同时利用了精英主义和基于反对的学习。因此,改进版试图在保证收敛的前提下,通过实现解的多样化来达到最优解。与多层神经网络相比,高阶神经网络(HONNs)具有单层可调参数、快速学习、鲁棒性容错和良好的逼近能力。它们考虑了更高阶的输入信号,通过函数扩展增加了输入的维度,从而可以区分不同的输入信号。然而,确定 HONN 中的扩展单元数量及其相关参数(即权重和阈值)是此类网络设计中的一个瓶颈。在此,我们使用 EOAEFA 以全自动方式设计了两个 HONN,即π-西格玛神经网络和功能链接人工神经网络,分别称为 EOAEFA-PSNN 和 EOAEFA-FLN。我们在金融时间序列数据集上对所提出的模型进行了评估,重点预测了四种收盘价、四种汇率和三种能源价格。通过实验、比较研究和统计测试,确定了所提方法的有效性。
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来源期刊
Financial Innovation
Financial Innovation Economics, Econometrics and Finance-Finance
CiteScore
11.40
自引率
11.90%
发文量
95
审稿时长
5 weeks
期刊介绍: Financial Innovation (FIN), a Springer OA journal sponsored by Southwestern University of Finance and Economics, serves as a global academic platform for sharing research findings in all aspects of financial innovation during the electronic business era. It facilitates interactions among researchers, policymakers, and practitioners, focusing on new financial instruments, technologies, markets, and institutions. Emphasizing emerging financial products enabled by disruptive technologies, FIN publishes high-quality academic and practical papers. The journal is peer-reviewed, indexed in SSCI, Scopus, Google Scholar, CNKI, CQVIP, and more.
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