Financial Distress Mechanisms and Corporate Governance in Kenya: An Empirical Analysis of Listed Companies and Regulatory Framework Assessment

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Bernard M. Omboi

Abstract

This study examines the effectiveness of financial distress mechanisms among companies listed on the Nairobi Securities Exchange (NSE) and assesses Kenya's regulatory framework against international standards. The research addresses the critical problem of inadequate early warning systems for corporate financial distress in Kenya, where the 25% default rate significantly exceeds regional benchmarks. Grounded in Financial Distress Theory, Agency Theory, and Institutional Theory, this quantitative study analyses 61 NSE-listed firms from 2018 to 2023 using logistic regression analysis complemented by document review of international regulatory frameworks. The findings reveal systematic disclosure deficiencies: 45% of firms received qualified audit opinions, 72% lacked adequate liquidity risk strategies, and 63% inadequately disclosed contingent liabilities averaging KES 2.3 billion per firm. The logistic regression demonstrates that qualified audit opinions increase default probability by 246% (OR = 3.46, p < 0.001), while undisclosed contingent liabilities raise risk by 14% per KES 1 billion (β = 0.14, p < 0.05). Document analysis of regulatory frameworks reveals that Kenya's voluntary approach contrasts sharply with mandatory systems in South Africa (8% default rate) and the EU (12% default rate). The study proposes evidence-based policy reforms, including mandatory solvency certifications, enhanced auditor liability frameworks, and automated early warning systems, to strengthen corporate financial stability and investor protection.

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How to Cite
M. Omboi, B. . (2026). Financial Distress Mechanisms and Corporate Governance in Kenya: An Empirical Analysis of Listed Companies and Regulatory Framework Assessment. African Multidisciplinary Journal of Research, 10(2), 210–237. https://doi.org/10.71064/spu.amjr.10.2.2025.496

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