Journal of Intelligent Marketing Management

Journal of Intelligent Marketing Management

Predicting the market influenced by consumer sentiments using artificial intelligence

Document Type : The scientific research paper

Authors
1 Department of Computer Engineering, University College of Nabi Akram,Tabriz, Iran
2 Department of Computer Engineering, University College of Nabi Akram, Tabriz, Iran
Abstract
Because of the non-linear fluctuations of the stock price, it is challenging to predict. Therefore, it is important to identify the characteristics that can be used to predict market behavior. Both traditional and modern methods are very important for these features. Among these features, we can mention the feelings and emotions of consumers. In this research, the effect of consumer sentiment factor in predicting market fluctuations has been investigated. For this purpose, the S&P500 index has been considered for forecasting first without considering the characteristics of consumer sentiments using BiLSTM deep neural network and then by combining the UMCSENT consumer sentiment factor. The experiments and results of this research show that the use of consumers' feelings and emotions increases the accuracy of forecasting the S&P500 index.
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Subjects


Baker and J. Wurgler, "Investor sentiment in the stock market, "Journal of economic perspectives," vol. 21, no. 2, pp. 129-151, 2007.
Gao, R. Wang, and E. Zhou, "Stock prediction based on optimized LSTM and GRU models," Scientific Programming," vol. 2021, pp. 1-8, 2021.
Sohangir, D. Wang, A. Pomeranets, and T. M. Khoshgoftaar, "Big Data: Deep Learning for financial sentiment analysis," Journal of Big Data, vol. 5, no. 1, pp. 1-25, 2018.
Mohan, S. Mullapudi, S. Sammeta, P. Vijayvergia, and D. C. Anastasiu, "Stock price prediction using news sentiment analysis," in 2019 IEEE fifth international conference on big data computing service and applications (BigDataService), 2019: IEEE, pp. 205-208
F. Stambaugh, J. Yu, and Y. Yuan, "The short of it: Investor sentiment and anomalies,"Journal of financial economics," vol. 104, no. 2, pp. 288-302, 2012..https://pipraz.com.
Rusiana, "Dynamic relationship between consumer confidence and federal funds interest rates: VECM and TVECM analyses," University of Georgia, Dec. 2023.
N. Bhandari, B. Rimal, N. R. Pokhrel, R. Rimal, K. R. Dahal, and R. K. Khatri, "Predicting stock market index using LSTM," Machine Learning with Applications, vol. 9, p. 100320, 2022.
 

  • Receive Date 19 October 2024
  • Revise Date 01 November 2024
  • Accept Date 01 November 2024