4.5 Article

Corporate governance and earnings management nexus: Evidence from theUKand Egypt using neural networks

Journal

INTERNATIONAL JOURNAL OF FINANCE & ECONOMICS
Volume 26, Issue 4, Pages 6281-6311

Publisher

WILEY
DOI: 10.1002/ijfe.2120

Keywords

corporate governance; corruption; earnings management; governance quality; neural networks

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The size of the board, proportion of independent outside directors, and percentage of female directors are associated with earnings management levels. Governance quality significantly affects earnings management.
Using conventional regressions and generalized regression neural networks (GRNNs), we examine the relationship between corporate governance (CG) and earnings management (EM). We also examine whether governance quality moderates the association between EM and CG for a sample of British and Egyptian companies. Our findings show that: (a) UK firms are likely to have lower levels of EM if they: have smaller boards, are dominated by independent outside directors, and have a low percentage of female directors; (b) Egyptian firms are likely to have lower levels of EM if they: have larger boards, are dominated by independent outside directors, and have a low percentage of female directors; (c) The governance quality (control of corruption) has a significant hidden effect on EM. Since our results provide empirical evidence that the board of directors plays a vital role in mitigating EM, these findings might lead to an improvement in the credibility of financial statements for investors in both the UK and Egypt. As policy implications, our findings inform regulators and policy-makers that corruption has a very strong hidden effect on EM and that they can deter EM by controlling the corruption level in their countries.

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