采用 TPE 贝叶斯优化的门控递归神经网络提高股指预测准确性

Bivas Dinda
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引用次数: 0

摘要

近年来,深度学习架构、神经网络以及丰富的金融数据和强大的计算机的结合正在改变金融业,促使我们开发出一种预测未来股票价格的先进方法。然而,人人触手可及的投资和交易方式使股票市场变得越来越复杂和易变。股市的复杂性和波动性的增加促使人们需要更多的模型,以有效捕捉不同股票价格的高波动性和非线性行为。本研究探索了门控递归神经网络(GRNN)算法,如 LSTM(长短期记忆)、GRU(门控递归单元)和混合模型,如 GRU-LSTM、LSTM-GRU,以及用于超参数优化的树状结构帕岑估计器(TPE)贝叶斯优化(TPE-GRNN)。目的是利用 TPE-GRNN 提高对印度股市著名指数 NIFTY 50 指数次日收盘价的预测精度。我们从股票基本面数据、技术指标、原油价格和宏观经济数据中精心挑选了八个有影响力的因素组合来训练模型,以捕捉指数价格与更广泛经济因素的变化。模型的性能使用 R2、MAPE 和 RMSE 等标准矩阵进行评估。对模型性能的分析揭示了特征选择和超参数优化(HPO)对提高股指价格预测准确性的影响。结果表明,我们提出的 TPE-LSTM 方法的 MAPE 是之前所有股指价格预测模型中最低(最好)的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Gated recurrent neural network with TPE Bayesian optimization for enhancing stock index prediction accuracy
The recent advancement of deep learning architectures, neural networks, and the combination of abundant financial data and powerful computers are transforming finance, leading us to develop an advanced method for predicting future stock prices. However, the accessibility of investment and trading at everyone's fingertips made the stock markets increasingly intricate and prone to volatility. The increased complexity and volatility of the stock market have driven demand for more models, which would effectively capture high volatility and non-linear behavior of the different stock prices. This study explored gated recurrent neural network (GRNN) algorithms such as LSTM (long short-term memory), GRU (gated recurrent unit), and hybrid models like GRU-LSTM, LSTM-GRU, with Tree-structured Parzen Estimator (TPE) Bayesian optimization for hyperparameter optimization (TPE-GRNN). The aim is to improve the prediction accuracy of the next day's closing price of the NIFTY 50 index, a prominent Indian stock market index, using TPE-GRNN. A combination of eight influential factors is carefully chosen from fundamental stock data, technical indicators, crude oil price, and macroeconomic data to train the models for capturing the changes in the price of the index with the factors of the broader economy. Single-layer and multi-layer TPE-GRNN models have been developed. The models' performance is evaluated using standard matrices like R2, MAPE, and RMSE. The analysis of models' performance reveals the impact of feature selection and hyperparameter optimization (HPO) in enhancing stock index price prediction accuracy. The results show that the MAPE of our proposed TPE-LSTM method is the lowest (best) with respect to all the previous models for stock index price prediction.
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