MultiHedge: Adaptive Coordination via Retrieval-Augmented Control
About
Decision-making under changing conditions remains a fundamental challenge in many real-world systems. Existing approaches often fail to generalize across shifting regimes and exhibit unstable behavior under uncertainty. This raises the research question: can retrieval-augmented LLM coordination improve the robustness of modular decision pipelines? We propose MultiHedge, a hybrid architecture where an LLM produces structured allocation decisions conditioned on retrieved historical precedents, and execution is grounded in canonical option strategies. In a controlled evaluation using U.S. equities, we compare MultiHedge to rule-based and learning-based baselines. The key result is that memory-augmented retrieval confers greater robustness and stability than increasing model scale alone. Our paper contributes a controlled computational study showing that memory and architectural design play a central role in robustness in modular decision systems.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Portfolio Management | U.S. large-cap equities (AAPL, TSLA, NVDA) 2021-2023 (test) | Sharpe Ratio1.69 | 6 |