Artificial intelligence and financial decision-making in manufacturing firms in Nairobi county, Kenya
Date
2025
Authors
Journal Title
Journal ISSN
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Publisher
KCA University
Abstract
This study investigated the effect of artificial intelligence on financial decision-making in
manufacturing firms in Nairobi County, Kenya, addressing the gap in understanding how AI
tools influence financial strategies despite their growing adoption in business operations.
With manufacturing firms facing intricate financial challenges, AI’s potential to enhance
efficiency, accuracy, and planning remains underexplored locally. The general objective was
to establish AI’s impact on financial decision-making, with specific objectives to assess the
influence of predictive analytics, evaluate the role of machine learning models, examine the
impact of automated financial reporting, and determine the effect of natural language
processing tools on these processes. The study was guided by four theories: the Technology
Acceptance Model, the Resource-Based View; the Automation Theory; and the Cognitive
Fit Theory. The study adopted a descriptive cross-sectional survey design. The target
population of this study were all the 2752 manufacturing firms in Nairobi County, Kenya. A
sample of 349 was arrived at using Yamane formula. The unit of observation was the finance
manager in each firm. Questionnaire was utilized in primary data collection. Data was
analyzed using descriptive and inferential statistics, including correlation and regression
analysis. The regression results revealed that 77.7 percent of the variation in financial
decision-making was explained by the four AI dimensions. The model was statistically
significant (F = 207.497, p < 0.05). Regression coefficients showed that all four dimensions
had significant positive effects on financial decision-making: predictive analytics (β = 0.325,
p < 0.001), machine learning models (β = 0.349, p < 0.001), automated financial reporting
(β = 0.206, p < 0.001), and natural language processing tools (β = 0.128, p = 0.001). The
study concluded that artificial intelligence significantly enhances financial decision-making
by improving budgeting, investment planning, cost management, and risk assessment. The
study recommends that manufacturing firms increase investments in AI tools to strengthen
decision-making efficiency and accuracy. Managers should prioritize the integration of
predictive analytics and machine learning into financial processes while expanding the use
of automation for accurate and timely reporting. Firms are also encouraged to adopt NLP
tools to reduce cognitive load in financial analysis and improve policy interpretation.
Policymakers and industry associations should provide supportive frameworks and
incentives to enhance AI adoption across firms, thereby strengthening competitiveness and
resilience in the manufacturing sector.