Analysis on The Influence Mechanism of Corporate Stock Price Based on Lasso RBF Neural Network

Authors

  • Chenyi Jiang
  • Peixue Xing
  • Xiangtian Shi

DOI:

https://doi.org/10.54097/hset.v22i.3297

Keywords:

RBF, Financial Indices, Stock Prices, Lasso Algorithm.

Abstract

In order to study the correlation between stock prices and financial indicators of Chinese listed companies, this paper selects representative and relevant data from CSMAR to study 12 indicators as input layers, which reflect the solvency, profitability and management ability of the companies. Based on the lasso algorithm, the data dimension is reduced to 5 indicators; a lasso RBF neural network is constructed and the neural network is trained to obtain the company's stock price simulation. The results show that the model has good robustness and the accuracy of the stock price fitting is 93%. Among them, the main contribution of net investment cash flow to stock price is 25.46, which provides some suggestions for stock price prediction analysis.

Downloads

Download data is not yet available.

References

Li Ling. Eviews-based analysis of factors influencing stock prices of listed companies[J]. Computer Programming Skills and Maintenance, 2021(12): 26-28.

Liu, Ren-Chong. Analysis of factors influencing stock price volatility of bank stocks[J]. Mall Modernization, 2010(15): 140.

Meng Yuwei, et al. Analysis of the factors influencing the share price of listed companies based on financial perspective: the banking industry as an example[J]. National Circulation Economy, 2021(02): 169-171.

Xu Yubo, Li Ruifen. Analysis of factors influencing share prices of listed companies[J]. China Agricultural Accounting, 2016(01): 10-12.

Yuan Qian. A review of domestic and international literature on the risk of stock price collapse[J]. Finance and Accounting Newsletter, 2018(33): 124-129.

Zhou L, Gao BX, Bai SJ. Statistical analysis of the main influencing factors of stock price[J]. Journal of Henan University (Natural Science Edition), 2001(4): 41-46.

Dong, terprises: evidence based on micro implementation of industrial policy[J]. Finance and Economics Series, 2021(6):12.

Xinxin. An empirical study on the factors influencing stock price based on principal component analysis: empirical data from the small and medium-sized enterprise board[J]. Finance and Accounting Newsletter, 2011.

Wang Dechun, Liu Jinjin. Analysis of the moderating role of institutional investors on corporate equity investment returns and share prices[J]. Statistics and Decision Making, 2018(20):5.

Xue, Yuan. Analysis of the financial effect of stock repurchase behavior of listed enterprises - taking enterprise A as an example [J]. Friends of Accounting, 2018(7):4.

Sun G, Zheng Q. High-tech enterprise qualification and the risk of stock price collapse of listed enterprises: evidence based on micro implementation of industrial policy[J]. Finance and Economics Series, 2021(6):12.

Downloads

Published

07-12-2022

How to Cite

Jiang, C., Xing, P., & Shi, X. (2022). Analysis on The Influence Mechanism of Corporate Stock Price Based on Lasso RBF Neural Network. Highlights in Science, Engineering and Technology, 22, 101-108. https://doi.org/10.54097/hset.v22i.3297