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Academic Journal of Business & Management, 2022, 4(4); doi: 10.25236/AJBM.2022.040416.

Predict the Price Change over Time with LSTM Neural Network

Author(s)

Zibin Bi1, Ruixuan Hao1, Ziqi Dai2

Corresponding Author:
Zibin Bi
Affiliation(s)

1Shihezi University, Shihezi, Xinjiang, 832061, China

2Anhui Jianzhu University, Hefei, Anhui, 230601, China

Abstract

Time series analysis can be used to analyze the price. The LSTM Neural Network model is used to predict the price. Moreover, the correlation analysis between variables and price is conducted. By improving and optimizing the mathematical model, the RMSE values of LSTM (Long Short Term Memory) with a single function of weight price are 8.719 and 13.759, and the RESM values of prediction results are larger than those of other models, so the accuracy of prediction results is higher.

Keywords

LSTM; Neural Network; Time series

Cite This Paper

Zibin Bi, Ruixuan Hao, Ziqi Dai. Predict the Price Change over Time with LSTM Neural Network. Academic Journal of Business & Management (2022) Vol. 4, Issue 4: 79-82. https://doi.org/10.25236/AJBM.2022.040416.

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