Stability-Oriented Financial Behavior System (SOFBS): A MERN-Based Adaptive Financial Management Platform for Risk-Minimized Living
Stability-Oriented Financial Behavior System (SOFBS): A MERN-Based Adaptive Financial Management Platform for Risk-Minimized Living
Author
Abhishek Tiwari
Student of Computer Science & Engineering, Parul University, Vadodara, Gujarat
thisisabhishektiwari07@gmail.com
Abstract:
Financial instability persists as a major global issue despite increasing access to income opportunities and digital financial tools. Many individuals struggle not because they earn insufficient income, but because they lack structured mechanisms to allocate and manage their finances effectively. Existing financial systems primarily focus on expense tracking or investment guidance, leaving a critical gap in real-time financial behavior correction and stability-focused planning.
This research introduces a novel concept called the Stability-Oriented Financial Behavior System (SOFBS), a web-based platform built entirely using the MERN stack (MongoDB, Express.js, React.js, Node.js). Unlike traditional financial applications, SOFBS is designed not only to track user expenses but to actively guide individuals in distributing their income in a way that minimizes financial risk while ensuring a stable and sustainable lifestyle.
The system introduces a dynamic allocation engine that adapts to user-specific conditions such as income type (fixed or variable), geographic cost of living, spending behavior, and financial obligations. Instead of relying on rigid rules like the 50/30/20 model, the platform continuously recalibrates spending recommendations based on real-time data.
A key innovation of this research is the Financial Stability Score (FSS), a composite metric that evaluates a user’s financial health by considering savings ratio, expenditure volatility, debt burden, and emergency preparedness. The system uses this score to generate corrective recommendations, effectively transforming financial management into a proactive and adaptive process.
Additionally, the platform introduces a “Risk Buffer Layer,” which anticipates potential financial disruptions such as income loss or unexpected expenses and adjusts allocation strategies accordingly. This ensures that users are not only managing their present finances but are also prepared for future uncertainties.
This paper provides a detailed explanation of the system architecture, operational methodology, algorithmic design, and expected outcomes. The proposed system represents a paradigm shift in personal finance management by prioritizing financial stability over wealth maximization, making it applicable to a broader population.