FGDM is a sequential multi-agent system using flow graphs, CoT/ToT prompts, and FAISS retrieval that reports mean Levenshtein distance reductions of 24.33 (Python) and 8.37 (C) with cosine similarities of 0.951 and 0.974 on 100 programs from ten open-source projects.
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MNAL reduces human effort in bug report labeling by up to 95.8% for readability and 196% for identifiability while improving identification performance and working with various neural models.
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FGDM: Reasoning Aware Multi-Agentic Framework for Software Bug Detection using Chain of Thought and Tree of Thought Prompting
FGDM is a sequential multi-agent system using flow graphs, CoT/ToT prompts, and FAISS retrieval that reports mean Levenshtein distance reductions of 24.33 (Python) and 8.37 (C) with cosine similarities of 0.951 and 0.974 on 100 programs from ten open-source projects.
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Human-Machine Co-Boosted Bug Report Identification with Mutualistic Neural Active Learning
MNAL reduces human effort in bug report labeling by up to 95.8% for readability and 196% for identifiability while improving identification performance and working with various neural models.