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Machine learning insights: probing the variable importance of ex-ante information

Ali Albada (Faculty of Business, Sohar University, Sohar, Oman)
Eimad Eldin Abusham (Faculty of Computing and Information Technology, Sohar University, Sohar, Oman)
Chui Zi Ong (School of Economics and Management, Xiamen University Malaysia, Sepang, Malaysia)
Khalid Al Qatiti (Faculty of Business, Sohar University, Sohar, Oman)

Managerial Finance

ISSN: 0307-4358

Article publication date: 27 August 2024

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Abstract

Purpose

Empirical examinations of initial public offering (IPO) initial returns often rely heavily on linear regression models. However, these models can prove inefficient owing to their susceptibility to outliers, a common occurrence in IPO data. This study introduces a machine learning method, known as random forest, to address issues that linear regression may struggle to resolve.

Design/methodology/approach

The study’s sample comprises 352 fixed-priced IPOs from the year 2004 until 2021. A unique aspect of this research is its application of the random forest method. The accuracy of random forest in comparison to other methods is evaluated. The findings indicate that the random forest model significantly outperforms other methods in all of the evaluated aspects.

Findings

The variable importance measure indicates that investors’ demand, divergence of opinion among investors and offer price are the most crucial predictors of IPO initial returns. These determinants hold particular significance due to the widespread use of the fixed-price method in Malaysia, as this method amplifies the information asymmetry in the IPO market.

Originality/value

To the best of the authors’ knowledge, this study is among the pioneering works in Malaysian literature to apply the random forest method to address the constraints of conventional linear regression models. This is achieved by considering a more extensive array of factors and acknowledging the influence of outliers. Additionally, this study adds value to Malaysian literature by ranking and identifying the ex-ante information that best signals the issuing firm’s quality. This contribution facilitates prospective investors’ decision-making processes and provides issuing firms with effective means to communicate their value and quality to the IPO market.

Keywords

Acknowledgements

This study was supported by Xiamen University Malaysia Research Fund (XMUMRF/2023-C11/ISEM/0038).

Citation

Albada, A., Abusham, E.E., Ong, C.Z. and Al Qatiti, K. (2024), "Machine learning insights: probing the variable importance of ex-ante information", Managerial Finance, Vol. ahead-of-print No. ahead-of-print. https://doi.org/10.1108/MF-12-2023-0765

Publisher

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Emerald Publishing Limited

Copyright © 2024, Emerald Publishing Limited

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