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A comparison of linear regression and neural network methods for predicting excess returns on large stocks

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  • Vijay Desai
  • Rakesh Bharati

Abstract

Recent studies have shown that there is predictable variation in returns of financial assets over time. We investigate whether the predictive power of the economic and financial variables employed in the above studies can be enhanced if the statistical method of linear regression is replaced by feedforward neural networks with backpropagation of error. A shortcoming of backpropagation networks is that too many free parameters allow the neural network to fit the training data arbitrarily closely resulting in an "overfitted" network. Overfitted networks have poor generalization capabilities. We explore two methods that attempt to overcome this shortcoming by reducing the complexity of the network. The results of our experiments confirm that an "overfitted" network, while making better predictions for within-sample data, makes poor predictions for out-of-sample data. The methods for reducing the complexity of the network, explored in this paper, clearly help improve out-of-sample forecasts. We show that one cannot say that the linear regression forecasts are conditionally efficient with respect to the neural networks forecasts with any degree of confidence. However, one can say that the neural networks forecasts are conditionally efficient with respect to the linear regression forecasts with some confidence. Copyright Kluwer Academic Publishers 1998

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  • Vijay Desai & Rakesh Bharati, 1998. "A comparison of linear regression and neural network methods for predicting excess returns on large stocks," Annals of Operations Research, Springer, vol. 78(0), pages 127-163, January.
  • Handle: RePEc:spr:annopr:v:78:y:1998:i:0:p:127-163:10.1023/a:1018993831870
    DOI: 10.1023/A:1018993831870
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    Cited by:

    1. Ritika Chopra & Gagan Deep Sharma, 2021. "Application of Artificial Intelligence in Stock Market Forecasting: A Critique, Review, and Research Agenda," JRFM, MDPI, vol. 14(11), pages 1-34, November.
    2. Gabor Nagy & Gergo Barta & Tamas Henk, 2015. "Portfolio optimization using local linear regression ensembles in RapidMiner," Papers 1506.08690, arXiv.org.
    3. Mike G. Tsionas, 2021. "Multi-criteria optimization in regression," Annals of Operations Research, Springer, vol. 306(1), pages 7-25, November.
    4. Kalpit Sharma & Arunabha Mukhopadhyay, 2023. "Cyber-risk Management Framework for Online Gaming Firms: an Artificial Neural Network Approach," Information Systems Frontiers, Springer, vol. 25(5), pages 1757-1778, October.
    5. Adam Fadlalla & Farzaneh Amani, 2014. "Predicting Next Trading Day Closing Price Of Qatar Exchange Index Using Technical Indicators And Artificial Neural Networks," Intelligent Systems in Accounting, Finance and Management, John Wiley & Sons, Ltd., vol. 21(4), pages 209-223, October.
    6. Varshini, Anu & Kayal, Parthajit & Maiti, Moinak, 2024. "How good are different machine and deep learning models in forecasting the future price of metals? Full sample versus sub-sample," Resources Policy, Elsevier, vol. 92(C).
    7. Angelini, Eliana & di Tollo, Giacomo & Roli, Andrea, 2008. "A neural network approach for credit risk evaluation," The Quarterly Review of Economics and Finance, Elsevier, vol. 48(4), pages 733-755, November.

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