TaxAgent: How Large Language Model Designs Fiscal Policy
        - URL: http://arxiv.org/abs/2506.02838v1
 - Date: Tue, 03 Jun 2025 13:06:19 GMT
 - Title: TaxAgent: How Large Language Model Designs Fiscal Policy
 - Authors: Jizhou Wang, Xiaodan Fang, Lei Huang, Yongfeng Huang, 
 - Abstract summary: This study introduces TaxAgent, a novel integration of large language models (LLMs) with agent-based modeling (ABM) to design adaptive tax policies.<n>In our macroeconomic simulation, heterogeneous H-Agents (households) simulate real-world taxpayer behaviors while the TaxAgent (government) utilizes LLMs to iteratively optimize tax rates, balancing equity and productivity.<n> Benchmarked against Saez Optimal Taxation, U.S. federal income taxes, and free markets, TaxAgent achieves superior equity-efficiency trade-offs.
 - Score: 22.859190941594296
 - License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
 - Abstract:   Economic inequality is a global challenge, intensifying disparities in education, healthcare, and social stability. Traditional systems like the U.S. federal income tax reduce inequality but lack adaptability. Although models like the Saez Optimal Taxation adjust dynamically, they fail to address taxpayer heterogeneity and irrational behavior. This study introduces TaxAgent, a novel integration of large language models (LLMs) with agent-based modeling (ABM) to design adaptive tax policies. In our macroeconomic simulation, heterogeneous H-Agents (households) simulate real-world taxpayer behaviors while the TaxAgent (government) utilizes LLMs to iteratively optimize tax rates, balancing equity and productivity. Benchmarked against Saez Optimal Taxation, U.S. federal income taxes, and free markets, TaxAgent achieves superior equity-efficiency trade-offs. This research offers a novel taxation solution and a scalable, data-driven framework for fiscal policy evaluation. 
 
       
      
        Related papers
        - LLM Economist: Large Population Models and Mechanism Design in   Multi-Agent Generative Simulacra [29.627070781534698]
We present a novel framework that uses agent-based modeling to design and assess economic policies.<n>At the lower level, bounded rational worker agents choose labor supply to maximize text-based utility functions learned in-context.<n>At the upper level, a planner agent employs in-context reinforcement learning to propose piecewise-linear marginal tax schedules anchored to the current U.S. federal brackets.
arXiv  Detail & Related papers  (2025-07-21T17:21:14Z) - Can AI expose tax loopholes? Towards a new generation of legal policy   assistants [7.237068561453082]
We introduce a novel prototype system designed to address the issues of tax loopholes and tax avoidance.<n>Our hybrid solution integrates a natural language interface with a domain-specific language tailored for planning.
arXiv  Detail & Related papers  (2025-03-21T17:40:06Z) - A Taxation Perspective for Fair Re-ranking [61.946428892727795]
We introduce a new fair re-ranking method named Tax-rank, which levies taxes based on the difference in utility between two items.
Our model Tax-rank offers a superior tax policy for fair re-ranking, theoretically demonstrating both continuity and controllability over accuracy loss.
arXiv  Detail & Related papers  (2024-04-27T08:21:29Z) - Learning Optimal Tax Design in Nonatomic Congestion Games [56.85292809260111]
In multiplayer games, self-interested behavior among the players can harm the social welfare.<n>We take the initial step of learning the optimal tax that can induce social welfare with limited feedback in congestion games.
arXiv  Detail & Related papers  (2024-02-12T06:32:53Z) - On the Potential and Limitations of Few-Shot In-Context Learning to
  Generate Metamorphic Specifications for Tax Preparation Software [12.071874385139395]
Nearly 50% of taxpayers filed their individual income taxes using tax software in the U.S. in FY22.
This paper formulates the task of generating metamorphic specifications as a translation task between properties extracted from tax documents.
arXiv  Detail & Related papers  (2023-11-20T18:12:28Z) - Algorithmic Fairness and Vertical Equity: Income Fairness with IRS Tax
  Audit Models [73.24381010980606]
This study examines issues of algorithmic fairness in the context of systems that inform tax audit selection by the IRS.
We show how the use of more flexible machine learning methods for selecting audits may affect vertical equity.
Our results have implications for the design of algorithmic tools across the public sector.
arXiv  Detail & Related papers  (2022-06-20T16:27:06Z) - Integrating Reward Maximization and Population Estimation: Sequential
  Decision-Making for Internal Revenue Service Audit Selection [2.2182596728059116]
We introduce a new setting, optimize-and-estimate structured bandits.
This setting is inherent to many public and private sector applications.
We demonstrate its importance on real data from the United States Internal Revenue Service.
arXiv  Detail & Related papers  (2022-04-25T18:28:55Z) - The AI Economist: Optimal Economic Policy Design via Two-level Deep
  Reinforcement Learning [126.37520136341094]
We show that machine-learning-based economic simulation is a powerful policy and mechanism design framework.
The AI Economist is a two-level, deep RL framework that trains both agents and a social planner who co-adapt.
In simple one-step economies, the AI Economist recovers the optimal tax policy of economic theory.
arXiv  Detail & Related papers  (2021-08-05T17:42:35Z) - ERMAS: Becoming Robust to Reward Function Sim-to-Real Gaps in
  Multi-Agent Simulations [110.72725220033983]
Epsilon-Robust Multi-Agent Simulation (ERMAS) is a framework for learning AI policies that are robust to such multiagent sim-to-real gaps.
ERMAS learns tax policies that are robust to changes in agent risk aversion, improving social welfare by up to 15% in complextemporal simulations.
In particular, ERMAS learns tax policies that are robust to changes in agent risk aversion, improving social welfare by up to 15% in complextemporal simulations.
arXiv  Detail & Related papers  (2021-06-10T04:32:20Z) - The AI Economist: Improving Equality and Productivity with AI-Driven Tax
  Policies [119.07163415116686]
We train social planners that discover tax policies that can effectively trade-off economic equality and productivity.
We present an economic simulation environment that features competitive pressures and market dynamics.
We show that AI-driven tax policies improve the trade-off between equality and productivity by 16% over baseline policies.
arXiv  Detail & Related papers  (2020-04-28T06:57:18Z) 
        This list is automatically generated from the titles and abstracts of the papers in this site.
       
     
           This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.