Trajectory-Informed Memory Generation for Self-Improving Agent Systems
arXiv cs.AI / 3/12/2026
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Key Points
- It presents a four-component framework (Trajectory Intelligence Extractor, Decision Attribution Analyzer, Contextual Learning Generator, Adaptive Memory Retrieval System) to extract actionable learnings from agent execution trajectories and apply them to future tasks.
- It emphasizes structured learnings with provenance and contextual, task-specific retrieval rather than storing generic conversational facts.
- The Contextual Learning Generator offers three tip types—strategy tips from successful patterns, recovery tips from failure handling, and optimization tips from inefficient yet salvageable executions—fed into prompts by the Adaptive Memory Retrieval System based on multi-dimensional similarity.
- Evaluation on the AppWorld benchmark shows significant improvements, including up to 14.3 percentage-point gains in scenario goal completion and 28.5 percentage-point gains on complex tasks (roughly a 149% relative increase).
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