中文

CoCoMUT: A Tool for Code-Context Mining and Automated Dataset Generation

软件工程 2026-06-30 v1

摘要

Software-engineering assistants often need method-level context beyond an isolated body, including enclosing-class information, documentation, callers, callees, type hierarchy, and structural characteristics. Manually collecting this context is time-consuming, inconsistent, and difficult to reproduce across large Java projects. We present CoCoMUT, a Java tool for Code-Context Mining and Automated Dataset Generation. CoCoMUT extracts context for a focal method or generates datasets at class, package, or system scope. It discovers project structure, resolves build and classpath information, constructs a SootUp static call graph, and reconciles bytecode-level call edges with Spoon-based source extraction. Each method record combines source, class, documentation, call-graph, and metadata context, providing reproducible inputs for training and running learned software-engineering techniques. The key contribution is a reusable, task-independent pipeline that unifies build discovery, source extraction, call-graph construction, source-bytecode reconciliation, and versioned JSON dataset generation. The resulting records can be consumed individually as context for a focal method or collectively as datasets for documentation, explanation, testing, review, repair, search, and program-comprehension workflows. We evaluate CoCoMUT on 20 real-world Java repositories evenly split between Maven and Gradle. CoCoMUT processed all 20 repositories, emitting 56,512 method-context records and 386,048 serialized call edges. Among call edges whose bytecode targets belonged to project source, CoCoMUT reconciled 97.8% to source method identities. In a manual audit of 200 randomly sampled methods across 10 systems, 99.0% of generated context records passed all applicable correctness checks.

引用

@article{arxiv.2606.31971,
  title  = {CoCoMUT: A Tool for Code-Context Mining and Automated Dataset Generation},
  author = {Alessandro Botta and Shiven Garisa and Jaya Vardhini Akurathi and Ahsanul Ameen Sabit and Trey Woodlief and Soneya Binta Hossain},
  journal= {arXiv preprint arXiv:2606.31971},
  year   = {2026}
}

备注

5 pages, 1 figure. Submitted to ISSTA 2026 Tool Track