Stock Prediction using Machine Learning

Dhilipan J, Shanmugam D. B., Quraishi Imran
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Abstract

Stock trading is one of the foremost activity in finance world. Stock market prediction is used to find the long run values of the stock and other financial factors influenced on a financial exchange. The technical and fundamental or the statistical analysis is employed by most of the stockbrokers while making the stock predictions. Python programming language in machine learning is used for the stock market prediction. In this paper we have proposed a Machine Learning (ML) approach which trains from the available stocks data and gain intelligence and then uses the acquired knowledge for an accurate prediction. In stock market prediction, the aim is to predict the longer term value of the financial stocks of a corporation [1]. The recent trend in market prediction technologies is that the use of machine learning approach which makes predictions supported the values of current stock market indices by training on their previous values. Machine learning itself employs different models to form prediction easier and authentic. This paper focus on Regression and Long Short Term Memory (LSTM) based Machine learning to predict stock values. The factors that are being considered include re-open, close, low, high and volume [2,3].
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利用机器学习进行股票预测
股票交易是金融界最重要的活动之一。股票市场预测是用来发现股票的长期价值和其他金融因素对金融交易所的影响。大多数股票经纪人在进行股票预测时采用技术面分析和基本面分析或统计分析。机器学习中的Python编程语言被用于股票市场预测。在本文中,我们提出了一种机器学习(ML)方法,该方法从可用的股票数据中进行训练并获得智能,然后使用获得的知识进行准确的预测。股票市场预测的目的是预测公司金融股的长期价值[1]。市场预测技术的最新趋势是,使用机器学习方法通过对当前股票市场指数的先前值进行训练来进行预测。机器学习本身使用不同的模型来形成更容易和真实的预测。本文主要研究基于回归和长短期记忆(LSTM)的机器学习来预测股票价值。考虑的因素包括重开、收盘、低点、高点和成交量[2,3]。
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Stock Prediction using Machine Learning தொல்காப்பியர் காட்டும் நில அமைப்பும் வாழ்க்கை முறையும் குறளும் தொகையும் अरुणकमल की कविताओं में अंतरराष्ट्रीय चेतना Rule Based Approach for Word Normalization in Transliterated Search Queries
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