Predict Stock Market Prices with Recurrent Neural Networks using NASDAQ Data Stream

Adam Kovacs, Bence Bogdandy, Zsolt Tóth
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引用次数: 2

Abstract

Prediction and modeling of stock market changes attract not only economists and other scientific professionals, but the general public as well. With the rise of blockchain, and cryptocurrencies, the interest in stock trading has surged. Stock prices are precisely recorded in frequent fixed intervals, and this data is publicly available. Due to the outstanding performance of recurrent neural networks in sequential data modeling, recurrent networks can be applied to model the stock market. Although accurate prediction of the changes is not possible due to the stock market’s highly stochastic stochastic nature, a recurrent neural network could give a good approximation of trends. National Association of Securities Dealers Automated Quotations publishes stock values every few minutes, which data stream was used to model and predict changes. This paper presents a proof of concept implementation of a stock market price prediction system using recurrent neural networks and a continuous data stream.
利用纳斯达克数据流用递归神经网络预测股票市场价格
股票市场变化的预测和建模不仅吸引着经济学家和其他科学专业人士,而且也吸引着普通大众。随着bb0和加密货币的崛起,人们对股票交易的兴趣激增。股票价格以频繁的固定间隔精确地记录下来,这些数据是公开的。由于递归神经网络在序列数据建模方面的突出表现,递归网络可以应用于股票市场的建模。虽然由于股票市场的高度随机性,对变化的准确预测是不可能的,但循环神经网络可以很好地近似趋势。美国证券交易商自动报价协会每隔几分钟发布一次股票价格,该数据流用于建模和预测变化。本文提出了一种基于递归神经网络和连续数据流的股票市场价格预测系统的概念验证实现。
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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