Lightweight Adaptation for LLM-based Technical Service Agent: Latent Logic Augmentation and Robust Noise Reduction
arXiv cs.LG / 3/20/2026
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Key Points
- It proposes a lightweight adaptation framework for LLM-based technical service agents to address latent decision dynamics and diverse valid responses while improving efficiency.
- Latent Logic Augmentation encompasses Planning-Aware Trajectory Modeling and Decision Reasoning Augmentation to better align supervised fine-tuning with latent decision processes and enhance stability.
- Robust Noise Reduction constructs a Multiple Ground Truths dataset via a dual-filtering approach to capture semantic diversity while reducing annotation noise.
- Lightweight Adaptation introduces a Hybrid Reward mechanism that combines an LLM-based judge with a lightweight relevance-based reranker to maintain high-quality rewards at lower training costs, demonstrated on real-world cloud service tasks.
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