AICLPLSep 28, 2025

Optimization Modeling via Semantic Anchored Alignment

arXiv:2510.05115v11 citationsh-index: 8
Originality Incremental advance
AI Analysis

This addresses the issue of logically flawed optimization models for users relying on LLMs for code generation, representing an incremental improvement over existing solver-driven methods.

The paper tackles the problem of semantic errors in LLM-generated optimization models by proposing SAC-Opt, a backward-guided correction framework that aligns semantic anchors, resulting in an average modeling accuracy improvement of 7.8% across seven datasets.

Large language models (LLMs) have opened new paradigms in optimization modeling by enabling the generation of executable solver code from natural language descriptions. Despite this promise, existing approaches typically remain solver-driven: they rely on single-pass forward generation and apply limited post-hoc fixes based on solver error messages, leaving undetected semantic errors that silently produce syntactically correct but logically flawed models. To address this challenge, we propose SAC-Opt, a backward-guided correction framework that grounds optimization modeling in problem semantics rather than solver feedback. At each step, SAC-Opt aligns the original semantic anchors with those reconstructed from the generated code and selectively corrects only the mismatched components, driving convergence toward a semantically faithful model. This anchor-driven correction enables fine-grained refinement of constraint and objective logic, enhancing both fidelity and robustness without requiring additional training or supervision. Empirical results on seven public datasets demonstrate that SAC-Opt improves average modeling accuracy by 7.8\%, with gains of up to 21.9\% on the ComplexLP dataset. These findings highlight the importance of semantic-anchored correction in LLM-based optimization workflows to ensure faithful translation from problem intent to solver-executable code.

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