2023
DOI: 10.54254/2753-8818/26/20241057
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Google stock price prediction by the back propagation neural network

Weiyi Sun

Abstract: Due to the influence of internal and external factors, stock prices often fluctuate greatly, which is also a big difficulty in the field of data mining and machine learning. This paper uses linear regression model, BP neural network model, and hard voting model to forecast Google stock. The results and accuracy of these three prediction models were observed respectively. Then a more accurate and practical model was selected to make a reasonable prediction of the closing price of Google stock in the following 1… Show more

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