
JIET OPEN ACCESS
Journal of Intelligence and Engineering Technology
ISSN:Pending (print) | ISSN:Pending (online) | Publication Frequency: Quarterly
Uniswap V4 Concentrated Liquidity Pricing: a Machine Learning Model for U.S. Institutional Liquidity Providers
* Corresponding Author1: Allen Lin, E-Mail: allenlin1992@hotmail.com
Publication
Accepted 2026 January 25 ; Published 2026 February 5
Journal of Intelligence and Engineering Technology, 2026, 1(1), Pending.
Abstract
Amid the institutionalization wave of Decentralized Finance (DeFi), U.S. institutional Liquidity Providers (LPs) have emerged as the core incremental capital for leading Decentralized Exchanges (DEXs). However, the adaptation gap between Uniswap V4's concentrated liquidity mechanism and institutional risk preferences, as well as regulatory compliance requirements, has hindered their market entry. This study focuses on the integration of "technical characteristics - institutional constraints - precise pricing" and constructs a machine learning pricing model optimized across three dimensions: return, risk, and compliance. By integrating Uniswap V4 on-chain data, institutional risk preference data, and market data, a Stacking ensemble architecture combining LightGBM and CNN-LSTM is designed, incorporating 22 core features to achieve precise pricing. Empirical results show that the model's Mean Absolute Error (MAE) on the test set was reduced by 37% compared to the benchmark, and the Root Mean Square Error (RMSE) is reduced by 42%. The Sharpe ratio reaches 1.87 (an increase of 62% compared to the benchmark), with a volatility of 15.3% and a compliance adaptability score of 91. In the case study, a $150 million liquidity supply achieved a 19.7% annualized return and an 8.3% maximum drawdown, successfully passing SEC compliance review. This research fills the gap in institution-oriented pricing models for V4, improves the institutional extension of Automated Market Maker (AMM) pricing theory, and provides a risk-controllable and compliance-adaptable pricing tool for U.S. institutions participating in DeFi, promoting the transformation of the DeFi ecosystem towards standardization and institutionalization. By aligning the V4 Hook mechanism with U.S. regulatory frameworks, this research provides a scalable technical standard for institutional DeFi adoption, reinforcing the competitive advantage of the U.S. Web3 financial ecosystem.
Keywords
Uniswap V4 , Machine Learning , U.S. Institutional LPs , DeFi Institutionalization , Risk Management , Stacking Ensemble Learning .
Metadata
Pages: 19-26
References: 25
Disciplines: Computer Science
Subjects: Machine Learning Model
Cite This Article
APA Style
Lin, A. (2026). Uniswap v4 concentrated liquidity pricing: a machine learning model for u.s. institutional liquidity providers. Journal of Intelligence and Engineering Technology, 1(1), 19-26. https://doi.org/10.70393/6a696574.333836
Acknowledgments
Not Applicable.
FUNDING
Not Applicable.
INSTITUTIONAL REVIEW BOARD STATEMENT
Not Applicable.
DATA AVAILABILITY STATEMENT
Not Applicable.
INFORMED CONSENT STATEMENT
Not Applicable.
CONFLICT OF INTEREST
Not Applicable.
AUTHOR CONTRIBUTIONS
Not application.
References
PUBLISHER'S NOTE
All claims expressed in this article are solely those of the authors and do not necessarily represent those of their affiliated organizations, or those of the publisher, the editors and the reviewers. Any product that may be evaluated in this article, or claim that may be made by its manufacturer, is not guaranteed or endorsed by the publisher.
Copyright © 2025 The Author(s). Published by Southern United Academy of Sciences.This work is licensed under a Creative Commons Attribution 4.0 International License , which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
Persistent Identifiers





Abstracting and Indexing




Quality Assurance


Archiving Services
t



