Integrating predictive analytics into strategic decision-making: A model for boosting profitability and longevity in small businesses across the United States
1 Independent Researcher, Virginia, USA.
2 Business Analyst and Project Manager, UK.
3 Independent Researcher, USA.
4 Independent Researcher, Toronto, Ontario, Canada.
Research Article
World Journal of Advanced Research and Reviews, 2024, 24(02), 2490–2507
Publication history:
Received on 7 August 2024; revised on 2 November 2024; accepted on 29 November 2024
Abstract:
The integration of predictive analytics into strategic decision-making has emerged as a transformative approach for small businesses in the United States, offering enhanced pathways to profitability and longevity. This study proposes a conceptual model that explores how predictive analytics can empower small businesses to make data-driven decisions, optimize resources, and mitigate risks. By leveraging advanced machine learning algorithms, data mining, and statistical techniques, small businesses can identify trends, predict customer behavior, and uncover growth opportunities. The proposed model focuses on integrating predictive analytics across key operational areas: financial planning, marketing, inventory management, and customer relationship management. In financial planning, predictive analytics enables more accurate forecasting of revenues and expenses, supporting budget optimization and investment decisions. In marketing, businesses can analyze consumer data to design targeted campaigns, improving conversion rates and customer retention. Inventory management benefits from predictive insights by anticipating demand patterns, reducing overstocking or stockouts. Moreover, customer relationship management is enhanced through personalized recommendations and proactive engagement strategies. This research emphasizes the accessibility of predictive analytics tools, particularly through cloud-based platforms, enabling small businesses to adopt these technologies without incurring substantial costs. Additionally, the study highlights challenges such as data quality, privacy concerns, and the need for technical expertise, proposing strategies to overcome these barriers. Case studies of small businesses that have successfully implemented predictive analytics demonstrate significant outcomes, including increased operational efficiency, reduced costs, and sustained competitive advantage. The findings underscore the importance of fostering a data-driven culture and investing in training to enhance employees’ analytical capabilities. Policymakers and industry stakeholders are encouraged to support initiatives that promote the adoption of predictive analytics in small businesses through funding, education, and technical assistance programs.
Keywords:
Predictive Analytics; Strategic Decision-Making; Small Businesses; Profitability; Longevity; Data-Driven Decisions; Machine Learning; Operational Efficiency; Customer Behavior; United States
Full text article in PDF:
Copyright information:
Copyright © 2024 Author(s) retain the copyright of this article. This article is published under the terms of the Creative Commons Attribution Liscense 4.0