Hybrid LLM and Higher-Order Quantum Approximate Optimization for CSA Collateral Management
Tao Jin, Stuart Florescu, Heyu (Andrew) Jin

TL;DR
This paper presents a hybrid quantum-classical pipeline for optimizing collateral management in finance, combining language models, quantum-inspired algorithms, and constraint programming to improve decision quality and transparency.
Contribution
It introduces a novel certifiable hybrid framework that integrates LLMs, quantum-inspired optimization, and constraint solving for complex financial collateral management tasks.
Findings
Hybrid approach outperforms classical baselines by over 9% in key metrics.
Quantum-inspired methods effectively handle domain-specific couplings.
Framework enhances transparency and reproducibility of optimization results.
Abstract
We address finance-native collateral optimization under ISDA Credit Support Annexes (CSAs), where integer lots, Schedule A haircuts, RA/MTA gating, and issuer/currency/class caps create rugged, legally bounded search spaces. We introduce a certifiable hybrid pipeline purpose-built for this domain: (i) an evidence-gated LLM that extracts CSA terms to a normalized JSON (abstain-by-default, span-cited); (ii) a quantum-inspired explorer that interleaves simulated annealing with micro higher order QAOA (HO-QAOA) on binding sub-QUBOs (subset size n <= 16, order k <= 4) to coordinate multi-asset moves across caps and RA-induced discreteness; (iii) a weighted risk-aware objective (Movement, CVaR, funding-priced overshoot) with an explicit coverage window U <= Reff+B; and (iv) CP-SAT as single arbiter to certify feasibility and gaps, including a U-cap pre-check that reports the minimal feasible…
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