The Invisible Value Gap: How AI-Driven Hr and Operational Analytics Distort Employee Contribution And Influence Brand Authenticity

Authors

  • Saurabh R Satghare PG Scholar, Dept. of MBA, Tulsiramji Gaikwad Patil Coll. of Engg. & Tech., Nagpur, Maharashtra,India. Author
  • Shreedhar R Raut PG Scholar, Dept. of MBA, Tulsiramji Gaikwad Patil Coll. of Engg. & Tech., Nagpur, Maharashtra,India. Author
  • Komal V Jangapalli PG Scholar, Dept. of MBA, Tulsiramji Gaikwad Patil Coll. of Engg. & Tech., Nagpur, Maharashtra,India. Author
  • Chirag S Biranwar PG Scholar, Dept. of MBA, Tulsiramji Gaikwad Patil Coll. of Engg. & Tech., Nagpur, Maharashtra,India. Author

DOI:

https://doi.org/10.47392/IRJAEM.2026.0253

Keywords:

Invisible Value Gap, Algorithmic Management, Brand Authenticity, People Analytics, Metric Reductionism Holistic Contribution Framework

Abstract

Abstracts Modern workplaces are generating more employee data than at any point in history, yet a striking paradox is emerging: the more precisely organizations measure their people, the less completely they may understand them. Artificial intelligence has embedded itself into hiring, performance management, engagement tracking, and workforce planning - promising objectivity, consistency, and scale. What it delivers, however, is a systematically incomplete picture. This paper introduces and examines the Invisible Value Gap (IVG) - the structural failure of AI-driven HR and operational analytics to observe, attribute, and reward employee contributions that are relational, intangible, or long-horizon in nature. It argues that the IVG is not a technical glitch awaiting a better algorithm; it is a predictable outcome of the assumptions baked into how these systems are designed and what theories of value they silently privilege. The distortions this gap produces do not remain internal: they corrode brand authenticity, erode employer reputation, and ultimately undermine the consumer trust that brand equity depends upon. The paper proposes the Holistic Contribution Framework (HCF) as a corrective architecture - not a rejection of analytics, but a more honest way of deploying them.

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Published

2026-05-09