Delane Deborah Naidu, Kerry McCullough and Faeezah Peerbhai
The purpose of this study is to construct a robust index and subindices to measure the quality of corporate governance for 266 firms listed in South Africa from 2004 to 2021.
Abstract
Purpose
The purpose of this study is to construct a robust index and subindices to measure the quality of corporate governance for 266 firms listed in South Africa from 2004 to 2021.
Design/methodology/approach
Public information on the compliance of King Code of Good Corporate Governance is used to construct a main index predicated on provisions relating to board characteristics, accounting and auditing and risk management. These categories are transformed into three subindices. All constructs are scored with binary coding and equally weighted.
Findings
Cronbach’s alpha test reveals that the index and subindices are highly reliable measures of corporate governance. The principal component analysis supports the construct validity of all measures.
Research limitations/implications
The index is limited to only three corporate governance subcategories and only focuses on South Africa.
Practical implications
These corporate governance indices provide governing authorities, policymakers, investors and other market participants direct information on the quality of corporate governance in South African firms.
Originality/value
As South Africa lacks a formal corporate governance indicator, the development of an appropriate corporate governance index and subindices contributes towards understanding the quality of corporate governance in South African firms. To the best of the authors’ knowledge, this is the first paper to conduct robustness tests on corporate governance indices designed for South African companies.
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Myrthe Blösser and Andrea Weihrauch
In spite of the merits of artificial intelligence (AI) in marketing and social media, harm to consumers has prompted calls for AI auditing/certification. Understanding consumers’…
Abstract
Purpose
In spite of the merits of artificial intelligence (AI) in marketing and social media, harm to consumers has prompted calls for AI auditing/certification. Understanding consumers’ approval of AI certification entities is vital for its effectiveness and companies’ choice of certification. This study aims to generate important insights into the consumer perspective of AI certifications and stimulate future research.
Design/methodology/approach
A literature and status-quo-driven search of the AI certification landscape identifies entities and related concepts. This study empirically explores consumer approval of the most discussed entities in four AI decision domains using an online experiment and outline a research agenda for AI certification in marketing/social media.
Findings
Trust in AI certification is complex. The empirical findings show that consumers seem to approve more of non-profit entities than for-profit entities, with the government approving the most.
Research limitations/implications
The introduction of AI certification to marketing/social media contributes to work on consumer trust and AI acceptance and structures AI certification research from outside marketing to facilitate future research on AI certification for marketing/social media scholars.
Practical implications
For businesses, the authors provide a first insight into consumer preferences for AI-certifying entities, guiding the choice of which entity to use. For policymakers, this work guides their ongoing discussion on “who should certify AI” from a consumer perspective.
Originality/value
To the best of the authors’ knowledge, this work is the first to introduce the topic of AI certification to the marketing/social media literature, provide a novel guideline to scholars and offer the first set of empirical studies examining consumer approval of AI certifications.
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The study aims to provide a comprehensive understanding of the existing literature on women’s leadership in academia by identifying the existing challenges for their…
Abstract
Purpose
The study aims to provide a comprehensive understanding of the existing literature on women’s leadership in academia by identifying the existing challenges for their underrepresentation, and proposing a new-age leadership interventions to address the inherent systemic biases and develop foster an equitable academic climate.
Design/methodology/approach
The study employed bibliometric analysis to map the literature by investigating publication and geographical trends. Techniques like citation, co-citation, bibliographic coupling and co-word analysis identified seminal research and emerging themes, providing insights into research developments and facilitating identification of avenues for future research.
Findings
Our study highlights how social, organizational and individual barriers disadvantage women academic leaders. Existing enablers for women in leadership, like mentorship, leadership development and family friendly policies, focus on bringing change within the prevailing academic culture, reinforcing the notion “women need support”, overlooking the influence of systemic barriers. Such interventions are often ineffective in bringing sustainable change. We propose integrating AI/machine learning (ML) technologies in leadership selection to reduce bias arising from subjectivity.
Research limitations/implications
This study contributes to the discourse on gender inequality in academic leadership by offering a robust understanding of the research topic and informing avenues for future research.
Practical implications
Policymakers and higher education institutions can use the findings of the study to aid the formulation of policies, initiatives and institutional procedures to mitigate the prevalent gender bias in academia and cultivate an inclusive culture for growth of women.
Originality/value
The paper analyses women’s under-representation as academic leaders and proposes a novel data-driven intervention using gamification, AI and ML, aiming to reshape gender dynamics in academic leadership.