Published October 8, 2025 | Version v1

Artificial Intelligence and Statistical Models in Business and Management: A Comprehensive Review

Authors/Creators

  • 1. Dr. D. Y. Patil. Arts, Commerce and Science college, Akurdi

Description

The rapid development of artificial intelligence (AI) and advanced statistical modeling has transformed business and management research, reshaping practices in finance, human resource management, operations, risk assessment, and strategic planning. This review synthesizes insights from eighteen foundational and contemporary studies spanning business analytics, AI-driven decision-making, and statistical approaches to organizational performance. From early statistical approaches such as Altman’s (1968) landmark study applied discriminant analysis to bankruptcy prediction, setting an early foundation for statistical approaches in finance and Barney’s (1991) resource-based view, to contemporary AI-driven applications in talent analytics, strategic planning, fraud detection, and digital transformation, the review demonstrates how statistical rigor and AI capabilities converge to improve decision-making and firm performance. Drawing on methodologies such as discriminant analysis, structural equation modeling, deep learning, and systematic reviews, the paper highlights the evolution from statistical transparency to AI adaptability. We conclude that combining interpretability with predictive accuracy offers the strongest path for sustainable competitive advantage.

Files

S063801.pdf

Files (964.8 kB)

Name Size Download all
md5:b949f1877c5a8f0e78ceffd4547e9600
964.8 kB Preview Download