Application of LSTM model optimized by individual-ordering-based adaptive genetic algorithm in stock forecasting

Yong He, Xiaohua Zeng, Huan Li, Wenhong Wei
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Abstract

PurposeTo improve the accuracy of stock price trend prediction in the field of quantitative financial trading, this paper takes the prediction accuracy as the goal and avoid the enormous number of network structures and hyperparameter adjustments of long-short-term memory (LSTM).Design/methodology/approachIn this paper, an adaptive genetic algorithm based on individual ordering is used to optimize the network structure and hyperparameters of the LSTM neural network automatically.FindingsThe simulation results show that the accuracy of the rise and fall of the stock outperform than the model with LSTM only as well as other machine learning models. Furthermore, the efficiency of parameter adjustment is greatly higher than other hyperparameter optimization methods.Originality/value(1) The AGA-LSTM algorithm is used to input various hyperparameter combinations into genetic algorithm to find the best hyperparameter combination. Compared with other models, it has higher accuracy in predicting the up and down trend of stock prices in the next day. (2) Adopting real coding, elitist preservation and self-adaptive adjustment of crossover and mutation probability based on individual ordering in the part of genetic algorithm, the algorithm is computationally efficient and the results are more likely to converge to the global optimum.
基于个体排序的自适应遗传算法优化LSTM模型在股票预测中的应用
目的为了提高定量金融交易领域股票价格趋势预测的准确性,本文以预测精度为目标,避免了大量的网络结构和长短期记忆(LSTM)的超参数调整。本文采用基于个体排序的自适应遗传算法对LSTM神经网络的网络结构和超参数进行了自动优化。仿真结果表明,该模型对股票涨跌的预测精度优于仅使用LSTM的模型以及其他机器学习模型。独创性/价值(1)利用AGA-LSTM算法将各种超参数组合输入到遗传算法中,寻找最优的超参数组合。与其他模型相比,该模型在预测次日股价涨跌趋势方面具有更高的准确性。(2)遗传算法部分采用了实数编码、精英保存和基于个体排序的交叉变异概率自适应调整,计算效率高,结果更容易收敛到全局最优。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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