Abstract

The rapid development of image and video processing technology has a significant impact on various industries. The analysis and forecast of the financial market income can not only provide investors with investment decisions, but also can correctly formulate various economic control policies for the government. The purpose of this study is to analyze and predict the financial market returns and various indexes based on deep learning CNN neural network algorithm in image processing technology. This study uses the time series method, using the convolution pooling process in CNN to effectively capture the local correlation characteristics of financial market data, then extract the important information hidden in the time series data, draw the trend curve of this information, and combine the features through image processing technology, finally realize the prediction of the financial market time series income index. The results show that in the deep learning algorithm of this study, the highest actual value of stock price after image processing is 3374, and the highest error value is 5.176%, which is nearly 20% less than other algorithms. When N1 = 1600, 3032 sliding windows are obtained, and the Euclidean norm of this point is 0.1586. The conclusion is that the deep learning algorithm of this study is effective and accurate for the prediction of financial market series. Image processing and data analysis technology provide effective methods and make important contributions to the research of financial field.

Highlights

  • With the popularization of modern computer vision technology, video and image processing is a hot research direction, which has made great progress and development, and has become a quite professional field

  • The development of industry promotes the development of image processing technology to a certain extent, but the correct application of image processing technology in many practical problems can often improve the efficiency of solving

  • It can be seen that the deep learning algorithm in this study is very effective and accurate for financial market prediction

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Summary

INTRODUCTION

With the popularization of modern computer vision technology, video and image processing is a hot research direction, which has made great progress and development, and has become a quite professional field. Financial Times combines the information of investors and listed companies, including the laws and characteristics of economic development, deeply studies the sequence of financial events, and obtains the correct analysis with quality. It can provide the theory of financial market analysis, prediction and monitoring. The expert group uses empirical decomposition method to decompose the structured data of other influencing factors and carbon trading price into a series of intrinsic mode functions (IMF) He reconstructed the IMF with a refined thickness approach to obtain high-frequency, low-frequency and trend conditions. A conclusion is drawn to illustrate the effectiveness and accuracy of the algorithm

TIME SERIES ANALYSIS METHOD
SYMBOL TREE
DEEP LEARNING ALGORITHM PREDICTION
IMAGE PROCESSING TECHNOLOGY
TIME SERIES DATA PREPROCESSING
DATA SET
MODEL PREDICTION PROCESS
TARGET INDEX
FAT TAIL ANALYSIS OF ASSET INCOME DISTRIBUTION
DIFFERENCE ANALYSIS OF FINANCIAL MARKET SEQUENCE FORECAST
VARIABLE STRUCTURE ANALYSIS OF FINANCIAL MARKET FORECASTING SEQUENCE
PREDICTION EFFECT ANALYSIS OF DEEP LEARNING ALGORITHM IN FINANCIAL MARKET
Findings
Conclusion

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