CLApr 12

Structure-Grounded Knowledge Retrieval via Code Dependencies for Multi-Step Data Reasoning

arXiv:2604.1051684.6h-index: 2
Predicted impact top 55% in CL · last 90 daysOriginality Incremental advance
AI Analysis

For LLMs solving domain-specific data analysis tasks, SGKR provides a more effective retrieval method that leverages code structure, outperforming similarity-based approaches.

SGKR improves multi-step data analysis by retrieving knowledge grounded in code dependency graphs rather than lexical similarity, achieving consistent gains in solution correctness over baselines on benchmarks.

Selecting the right knowledge is critical when using large language models (LLMs) to solve domain-specific data analysis tasks. However, most retrieval-augmented approaches rely primarily on lexical or embedding similarity, which is often a weak proxy for the task-critical knowledge needed for multi-step reasoning. In many such tasks, the relevant knowledge is not merely textually related to the query, but is instead grounded in executable code and the dependency structure through which computations are carried out. To address this mismatch, we propose SGKR (Structure-Grounded Knowledge Retrieval), a retrieval framework that organizes domain knowledge with a graph induced by function-call dependencies. Given a question, SGKR extracts semantic input and output tags, identifies dependency paths connecting them, and constructs a task-relevant subgraph. The associated knowledge and corresponding function implementations are then assembled as a structured context for LLM-based code generation. Experiments on multi-step data analysis benchmarks show that SGKR consistently improves solution correctness over no-retrieval and similarity-based retrieval baselines for both vanilla LLMs and coding agents.

Foundations

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