GeomHerd: A Forward-looking Herding Quantification via Ricci Flow Geometry on Agent Interactive Simulations
Lake Yang, Junwei Su, Jingfeng Zeng, Wenhao Lu, Xingzhi Qian, Weitong Zhang, Chuan Wu, Dunhong Jin

TL;DR
GeomHerd introduces a forward-looking geometric framework using Ricci flow on agent interaction graphs to predict herding in financial markets ahead of traditional methods.
Contribution
It develops a novel graph-based herding quantification method that anticipates market coordination by analyzing the topology of agent interaction networks.
Findings
GeomHerd detects herding 272 steps before market onset.
It recalls 65% of critical trajectories 318 steps early.
The method outperforms price-only baselines in forecasting cascades.
Abstract
Herding -- where agents align their behaviors and act collectively -- is a central driver of market fragility and systemic risk. Existing approaches to quantify herding rely on price-correlation statistics, which inherently lag because they only detect coordination after it has already moved realised returns. We propose GeomHerd, a forward-looking geometric framework that bypasses this observability lag by quantifying coordination directly on upstream agent-interaction graphs. To generate these graphs, we treat a heterogeneous LLM-driven multi-agent simulator -- each financial trader instantiated by a persona-conditioned LLM call -- as a forecastable world, and evaluate the geometric pipeline on the Cividino--Sornette continuous-spin agent-based substrate as our headline financial testbed. By tracking the discrete Ollivier--Ricci curvature of these action graphs, GeomHerd captures the…
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