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News/ExplainFuzz: Explainable and Constraint-Conditioned Test Generation with Probabilistic Circuits
arxiv
PublishedApril 9, 2026 at 4:00 AM
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ExplainFuzz: Explainable and Constraint-Conditioned Test Generation with Probabilistic Circuits

Source
arxiv.orgfull article ↗
Read on arxiv→
Publisher summary· verbatim

arXiv:2604.06559v1 Announce Type: cross Abstract: Understanding and explaining the structure of generated test inputs is essential for effective software testing and debugging. Existing approaches--including grammar-based fuzzers, probabilistic Context-Free Grammars (pCFGs), and Large Language Model

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Discussion
Mentioned models
04
  • 01
    ExplainFuzz
  • 02
    Probabilistic Circuits (PCs)
  • 03
    Large Language Models (LLMs)
  • 04
    pCFGs
Source
↗
arxiv
Read original ↗All from arxiv →
Tags
04
#software testing#debugging#fuzzing#probabilistic circuits

No replies yet. Be first.

Mentioned models
04
  • 01
    ExplainFuzz
  • 02
    Probabilistic Circuits (PCs)
  • 03
    Large Language Models (LLMs)
  • 04
    pCFGs
Source
↗
arxiv
Read original ↗All from arxiv →
Tags
04
#software testing#debugging#fuzzing#probabilistic circuits

Related coverage

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