AgileRate: Bringing Adaptivity and Robustness to DeFi Lending Markets
Mahsa Bastankhah, Viraj Nadkarni, Xuechao Wang, Pramod Viswanath

TL;DR
This paper introduces AgileRate, a dynamic, adaptive interest rate model for DeFi lending that responds to market changes in real-time, improving efficiency and reducing liquidation risks compared to static protocols.
Contribution
It presents a novel real-time interest rate controller based on recursive least squares, with theoretical guarantees and robustness analysis against adversarial manipulation.
Findings
Low error in fitting Aave data
Outperforms static protocols in utilization stability
Reduces liquidation frequency
Abstract
Decentralized Finance (DeFi) has revolutionized lending by replacing intermediaries with algorithm-driven liquidity pools. However, existing platforms like Aave and Compound rely on static interest rate curves and collateral requirements that struggle to adapt to rapid market changes, leading to inefficiencies in utilization and increased risks of liquidations. In this work, we propose a dynamic model of the lending market based on evolving demand and supply curves, alongside an adaptive interest rate controller that responds in real-time to shifting market conditions. Using a Recursive Least Squares algorithm, our controller tracks the external market and achieves stable utilization, while also controlling default and liquidation risk. We provide theoretical guarantees on the interest rate convergence and utilization stability of our algorithm. We establish bounds on the system's…
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Taxonomy
TopicsFinTech, Crowdfunding, Digital Finance · Private Equity and Venture Capital
