Machine learning-enhanced finance dashboard for realtime revenue forecasting in business intelligence applications
- Henry Ese Ivwighre,
- Mohammad Ahmad,
- Mohammad Emad Arafah
- Surelock McGill Group,
- University of Petra
Sustainable Development Goals
- SDG 8 Decent Work and Economic Growth
- SDG 9 Industry, Innovation, and Infrastructure
Abstract
Financial data analysis and revenue forecasting are essential for organizations seeking a competitive edge in today's dynamic business environment. This paper introduces a comprehensive machine learning-based predictive analytics and interactive visualization finance dashboard, designed to provide holistic business intelligence. The system employs a robust threetier architecture, featuring a React frontend, Node.js/Express backend, MongoDB database, and Regression.js for revenue forecasts. K-fold cross-validation was conducted on three financial datasets-Yahoo Finance SP 500, Kaggle Store Sales, and UCI Retail-yielding a coefficient of determination (R2) of 0.89, mean absolute percentage error (MAPE), and root mean squared error (RMSE) of 0.18. System performance achieved a 1.2 -second average API response time, with 95% sub-second execution under 500 concurrent users. Database queries averaged 85 ms (59.5% improvement), and chart rendering 450 ms 62.5% improvement) over baseline implementations. Comparative analysis against Tableau, Power BI, and Qlik Sense revealed competitive advantages in integrated machine learning, deployment simplicity, and cost-effectiveness for small-to-medium enterprises. The primary contribution demonstrates the practical feasibility of lightweight machine learning integration within browser-based dashboards under strict latency constraints, providing empirical evidence on architectural trade-offs between model sophistication, computational efficiency, and user experience. User evaluation with 47 participants showed 73% excellent overall satisfaction ratings, with 7 8% for usability and 8 2% for performance. The findings highlight the system's potential to transform financial decisionmaking and set a new standard for business intelligence platforms.
Publication Information
Output type
Original language
EnglishPages from-to (Number of pages)
Pages 58-63 (6 pages)Publication milestones
- Published - 05/02/2026
Publication status
Publisher
Institute of Electrical and Electronics Engineers Inc., United StatesPublication series
- Publisher name: IEEE
Publication series name: 2025 4th International Conference on Computing, Management and Telecommunications, ComManTel 2025
ISBN (Electronic)
9798331568764External Publication IDs
- Scopus: 105033890365
