Possibility Theory Quantification in Human Capital Management: A Scientific Machine Learning (SciML) Perspective
Barbara Keary, Karriem "A.J." Perry

TL;DR
This paper applies Scientific Machine Learning using PDEs and Bayesian techniques to model and analyze the dynamics of human capital management, revealing significant temporal changes in covariate relationships.
Contribution
It introduces a PDE-based SciML framework for HRM, incorporating Bayesian methods to handle polymorphic uncertainty in non-stationary environments.
Findings
Significant relationship between targeted productivity and time.
Covariate structures change significantly over time.
Conditions impact covariate relationships in HRM.
Abstract
This study explores the use of Machine Learning (ML) in the field of Human Resources Management (HRM) alternatively, Human Capital Management (HCM), through a unique approach of employing partial differential equations (PDEs) to address the complexity of anthropomorphic systems. The mathematical representation offers a robust evaluation of human activities and demonstrates the potential of Bayesian-based machine learning techniques for visual representation in predictive analytics applications. This study is a part of a series of manuscripts about Scientific Machine Learning (SciML), a method that uses partial differential equations to represent physical systems and domain-specific data. In this text, the data are from non-stationary environments with polymorphic uncertainty. The hypotheses tested in this study are: H1a (null hypothesis) which states that the structure of a covariate…
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Taxonomy
TopicsComplex Systems and Decision Making
