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Journal of Applied Mathematics and Computation

ISSN Print: 2576-0645 Downloads: 146162 Total View: 1801961
Frequency: quarterly ISSN Online: 2576-0653 CODEN: JAMCEZ
Email: jamc@hillpublisher.com
Article Open Access http://dx.doi.org/10.26855/jamc.2023.03.016

Research on Quantitative Analysis Method of Financial Data Based on Machine Learning

Shulang Zhao

Faculty of Science, Beijing University of Technology, Beijing, China.

*Corresponding author: Shulang Zhao

Published: May 6,2023

Abstract

With the development of the Internet and the continuous innovation of artificial intelligence, the study of financial data based on quantitative analysis methods of machine learning has also emerged. Quantitative analysis of financial data is a method of using computers to analyse financial data to predict the direction of stock market fluctuations in order to obtain excess returns. Machine learning has become an important tool in quantitative analysis methods, and has shown better performance than traditional quantitative analysis methods. Investing in financial data through quantitative analysis methods based on machine learning has advantages that traditional investment methods do not have, such as objectivity and accuracy, and is thus used by a wide range of investors and financial institutions. This paper firstly explains the feasibility of forecasting financial markets through the efficient market hypothesis, followed by the characteristics of quantitative analysis methods and the application of machine learning in quantitative analysis methods.

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How to cite this paper

Research on Quantitative Analysis Method of Financial Data Based on Machine Learning

How to cite this paper:  Shulang Zhao. (2023) Research on Quantitative Analysis Method of Financial Data Based on Machine Learning. Journal of Applied Mathematics and Computation7(1), 147-151.

DOI: http://dx.doi.org/10.26855/jamc.2023.03.016