A Hierarchical Error-Corrective Graph Framework for Autonomous Agents with LLM-Based Action Generation
Cong Cao, Jingyao Zhang, Kun Tong

TL;DR
This paper introduces a hierarchical framework for autonomous agents that improves strategy selection, error analysis, and contextual understanding using multi-dimensional metrics, structured error classification, and graph-based retrieval.
Contribution
It presents three novel components—MDTS, EMC, and CCGR—that enhance the precision, interpretability, and adaptability of LLM-based autonomous agents.
Findings
Enhanced strategy selection reduces negative transfer.
Structured error attribution improves root cause analysis.
Graph retrieval accelerates adaptation in complex tasks.
Abstract
We propose a Hierarchical Error-Corrective Graph FrameworkforAutonomousAgentswithLLM-BasedActionGeneration(HECG),whichincorporates three core innovations: (1) Multi-Dimensional Transferable Strategy (MDTS): by integrating task quality metrics (Q), confidence/cost metrics (C), reward metrics (R), and LLM-based semantic reasoning scores (LLM-Score), MDTS achieves multi-dimensional alignment between quantitative performance and semantic context, enabling more precise selection of high-quality candidate strate gies and effectively reducing the risk of negative transfer. (2) Error Matrix Classification (EMC): unlike simple confusion matrices or overall performance metrics, EMC provides structured attribution of task failures by categorizing errors into ten types, such as Strategy Errors (Strategy Whe) and Script Parsing Errors (Script-Parsing-Error), and decomposing them according to…
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