AgenticSZZ reframes bug-inducing commit identification as temporal knowledge graph search navigated by an LLM agent, reporting F1 scores of 0.47-0.79 and up to 34% improvement over prior SZZ methods on three datasets.
Title resolution pending
3 Pith papers cite this work. Polarity classification is still indexing.
fields
cs.SE 3representative citing papers
Behavioral Co-Versioning couples Git history with a queryable Behavioral Archive of run-time observations to enable semantic diffing and behavior-aware analysis of software evolution.
APIKG4Syn synthesizes API-oriented training data via knowledge graphs and Monte Carlo search to fine-tune a 7B model that reaches 25% pass@1 on HarmonyOS code generation, beating untuned GPT-4o at 17.59%.
citing papers explorer
-
AgenticSZZ: Temporal Knowledge Graph-Guided Agentic Bug-Inducing Commit Identification
AgenticSZZ reframes bug-inducing commit identification as temporal knowledge graph search navigated by an LLM agent, reporting F1 scores of 0.47-0.79 and up to 34% improvement over prior SZZ methods on three datasets.
-
Treating Run-time Execution History as a First-Class Citizen: Co-Versioning Run-time Behavior alongside Code
Behavioral Co-Versioning couples Git history with a queryable Behavioral Archive of run-time observations to enable semantic diffing and behavior-aware analysis of software evolution.
-
Knowledge-Graph-Driven Data Synthesis for Low-Resource Software Development: A HarmonyOS Case Study
APIKG4Syn synthesizes API-oriented training data via knowledge graphs and Monte Carlo search to fine-tune a 7B model that reaches 25% pass@1 on HarmonyOS code generation, beating untuned GPT-4o at 17.59%.