Stock Market Predication Using Machine Learning

Nitish Verma, B. Mohapatra
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引用次数: 2

Abstract

Accuracy is a key factor in predicting a stock market. In the last decade, investors use the time series method is used to predict stock prices. But it needs improvement because the time series uses large data and time. In a given system, we are using Machine learning to predict stock prices. Machine learning is for enabling machines to learn like humans by collecting, storing, analyzing data, and developing a decision making on its own. Performing a search vector machine in a supervised machine learning algorithm can be done by studying an algorithm and by the statistical model. SVM use from classification as well as a regression problem. Ant it generally uses kernel trick for the transformation of data. It finds a moderate boundary between the possible outcomes. In statics linear regression is a linear approach to modeling the solar response and one or more explainer variables the process is called multiple linear regression for getting accurate output we implement machine learning along with surprised classifying this will be based on linear regression. The result will compare with real data and error will calculate. Linear regression techniques show an accuracy of 82%. Whereas, the proposed method shows an accuracy of 97% in prediction.
利用机器学习进行股票市场预测
准确是预测股市的一个关键因素。近十年来,投资者常用时间序列方法来预测股票价格。但它需要改进,因为时间序列使用大量数据和时间。在一个给定的系统中,我们使用机器学习来预测股票价格。机器学习是为了使机器能够像人类一样通过收集、存储、分析数据和自己制定决策来学习。在监督机器学习算法中执行搜索向量机可以通过研究算法和统计模型来完成。利用支持向量机进行分类以及一个回归问题。它通常使用核技巧进行数据的转换。它在可能的结果之间找到了一个适度的边界。在静力学中,线性回归是一种模拟太阳响应和一个或多个解释变量的线性方法,这个过程被称为多元线性回归,为了获得准确的输出,我们实现了机器学习和惊喜分类,这将基于线性回归。计算结果将与实际数据进行比较,并计算误差。线性回归技术显示准确率为82%。而该方法的预测准确率为97%。
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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