利用超参数化LSTM模型预测印度政府利益相关者石油价格

A. K. Singh, Joyjit Patra, Monalisa Chakraborty, Subir Gupta
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引用次数: 5

摘要

投资就是获取资金并从中获利。投资已成为中产阶级家庭的时髦词。人们可以用各种方式进行投资。土地、黄金、珠宝、现金、共同基金和股票市场都可以进行投资。我们都知道股票市场是多么不稳定。但为什么它对中产阶级家庭有利呢?例如,一个来自中产阶级家庭的男人可能想买土地,但它可能太贵了。然而,有可能以微薄的费用获得一份股份。投资和结果之间的差距在这里是显而易见的。由于金融股票市场的波动性和非线性,预测具有挑战性。人工智能和计算能力的提高提高了股票价格预测程序的准确性。在本文中,我们认为巴拉特石油公司有限公司(BPCL)、印度斯坦石油公司有限公司(HPCL)和印度石油公司(I.O.C.)是印度石油工业中拥有最大股份的政府石油公司。本文将机器学习的混合模型与数据科学模型相结合,增强了对效果的预测。基于机器学习的神经网络超参数调整LSTM已用于估计来自印度政府石油行业的三股股票的次日收盘价。在创建新的模型输入变量时,会考虑开盘价和收盘价。这个项目的准确率在99%左右。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of Indian government stakeholder oil stock prices using hyper parameterized LSTM models
An investment is capturing money to profit from it. Investing has become a buzzword among middle-class households. People can invest their money in a variety of ways. Land, gold, jewels, cash, mutual funds, and the stock market may all make investments. We all know how volatile the stock market is. But why is it beneficial to middle-class families? For example, a man from a middle-class family may want to buy land, but it may be too expensive. However, it is possible to obtain a share for a pittance. The disparity between investment and result is apparent here. Forecasting is challenging due to the volatility and non-linearity of financial stock markets. Artificial intelligence and increased computing power have enhanced accuracy in stock price prediction programs. In this paper, we consider Bharat Petroleum Corporation Limited (BPCL), Hindustan Petroleum Corporation Limited (HPCL), and Indian Oil Corporation (I.O.C.) to be the government oil corporations with the most significant stake in the Indian petroleum industry. This paper enhances the prediction of effect by combining a hybridized model of Machine Learning with a Data Science model. Machine Learning-based Hyper Parameter Tuning of Neural Network LSTM has been used to estimate the following day closing price for three equity from Indian government oil industries. The open and close stock prices are considered when creating new model input variables. This project's accuracy is around 99 percent.
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