基于深度学习的新冠肺炎金融危机印尼股价预测

Dian Angga Prasetyo, R. Rokhim
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摘要

本文旨在将深度学习模型长短期记忆(LSTM)用于新冠肺炎金融危机下的股票预测模型。2019冠状病毒病的金融影响导致全球许多指数下跌。对于印尼这样的新兴国家来说,金融危机的影响更大,外国投资者往往会在金融危机事件中撤出在新兴国家的投资。深度学习在股票价格预测等金融时间序列应用中的应用已经得到了广泛的研究。本文采用LSTM模型的一种变体(Bidirectional LSTM) BiLSTM模型来预测股票收盘价。使用历史价格将股票预测应用于从印度尼西亚股票市场中选择的公司。然后使用平均绝对百分比误差(MAPE)和对称平均绝对百分比误差(SMAPE)对模型进行评估。股票的实际价格和预测价格之间的图形比较用图表来研究股票价格的变动。为了研究COVID-19期间对股票价格的影响,采用Wilcoxon模型进行干预分析。该股票价格预测模型能够以最小的误差预测金融危机前和危机期间的股票价格。干预分析结果显示,在新冠肺炎金融危机期间,卫生部门的影响是积极的,而交通、金融、信息技术和娱乐等其他部门的影响是消极的。能够分析和研究股票的股价走势有利于投资者了解金融危机对某些行业的影响以及某些股票或行业在可能导致替代投资策略和决策的情况下的行为。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Indonesian Stock Price Prediction using Deep Learning during COVID-19 Financial Crisis
This research paper aims to use the deep learning model Long Short-Term Memory (LSTM) for the stock prediction model under the financial crisis of COVID-19. The financial impact of the COVID-19 has brought many of the world's indexes down. The impact of the financial crisis is even riskier for an emerging country such as Indonesia where foreign investors tend to take out their investments in emerging countries in financial crisis events. The application of deep learning in financial time series applications such as stock price prediction has been researched extensively. This study used the (Bidirectional LSTM) BiLSTM model which is a variation of the LSTM model to predict stock closing price. The stock prediction is applied to a selected company from the Indonesian stock market using historical prices. The model is then evaluated using metrics Mean Absolute Percentage Error (MAPE) and Symmetric Mean Absolute Percentage Error (SMAPE). A graphical comparison between the actual price and predicted price of the stock is charted to study the stock price movement. To study the impact during COVID-19 on the stock prices, an intervention analysis is conducted along with the Wilcoxon model. The stock price prediction model can forecast the price of stocks before and during the financial crisis with minimal error. The intervention analysis result showed that health sectors have a positive effect while other sectors such as transportation, finance, information technology, and entertainment have a negative effect during the financial crisis of COVID-19. Being able to analyze and study the stock price movement of stocks is beneficial to investors in understanding the impact of the financial crisis on some industries and the behavior of certain stocks or industries under the circumstances which can lead to alternate investment strategies and decision making.
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