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Trade in Minutes! Rationality-Driven Agentic System for Quantitative Financial Trading

6 October 2025
Zifan Song
Kaitao Song
Guosheng Hu
Ding Qi
Junyao Gao
Xiaohua Wang
Dongsheng Li
Cairong Zhao
    AIFin
ArXiv (abs)PDFHTML
Main:10 Pages
6 Figures
Bibliography:4 Pages
6 Tables
Appendix:3 Pages
Abstract

Recent advancements in large language models (LLMs) and agentic systems have shown exceptional decision-making capabilities, revealing significant potential for autonomic finance. Current financial trading agents predominantly simulate anthropomorphic roles that inadvertently introduce emotional biases and rely on peripheral information, while being constrained by the necessity for continuous inference during deployment. In this paper, we pioneer the harmonization of strategic depth in agents with the mechanical rationality essential for quantitative trading. Consequently, we present TiMi (Trade in Minutes), a rationality-driven multi-agent system that architecturally decouples strategy development from minute-level deployment. TiMi leverages specialized LLM capabilities of semantic analysis, code programming, and mathematical reasoning within a comprehensive policy-optimization-deployment chain. Specifically, we propose a two-tier analytical paradigm from macro patterns to micro customization, layered programming design for trading bot implementation, and closed-loop optimization driven by mathematical reflection. Extensive evaluations across 200+ trading pairs in stock and cryptocurrency markets empirically validate the efficacy of TiMi in stable profitability, action efficiency, and risk control under volatile market dynamics.

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