--- license: cc-by-4.0 language: - en task_categories: - text-classification - text-generation tags: - cybersecurity - cve - cwe - vulnerability - security pretty_name: CVE-to-CWE Consensus size_categories: - 100K Vulnerability`") that name no mechanism are dropped (~1.5% of rows; the CWE is not derivable from the text). - **Hard-weighted training cap, train split only:** when a common CWE exceeds the per-class cap (lowered to **1,500**), the **train** split keeps inference-"hard" rows (weakness not named) over easy lexical-match rows. **Validation/test are capped without this weighting**, so they keep real-world prevalence — train is ~20% lexical-easy, val/test ~44%. Evaluate on the stratified easy/hard numbers. - **69 reviewed label corrections:** gold labels that two independent models flagged and a human confirmed against the MITRE CWE definition (e.g. a CSRF labeled XSS, an SSRF labeled "improper encoding") override the computed consensus. Models trained on the previous revision were trained on the un-reweighted data. ## Example row ```json {"messages": [ {"role": "system", "content": "You are a vulnerability analyst. Given a CVE description, reply with only the CWE ID(s) it maps to, comma-separated."}, {"role": "user", "content": "A reflected cross-site scripting issue in Acme Portal lets a remote attacker inject arbitrary script via the q parameter."}, {"role": "assistant", "content": "CWE-79"} ]} ``` Multi-label targets are comma-separated and numerically sorted, e.g. `"CWE-79, CWE-352"`. The model input is the **description only** — CVE IDs and source label fields are never included, to avoid memorization/leakage. ## How it was built 1. **Sources (official upstreams only):** - [NVD CVE API 2.0](https://nvd.nist.gov/developers/vulnerabilities) — analyst-assigned CWEs (`weaknesses`). - [CVEProject/cvelistV5](https://github.com/CVEProject/cvelistV5) — CNA-supplied CWEs (`problemTypes`) and the English description. - [MITRE CWE](https://cwe.mitre.org) catalog (v4.20) — View-1003 membership + the `ChildOf` hierarchy. 2. **Roll-up:** every assigned CWE is rolled up to its nearest View-1003 mapping ancestor(s). 3. **Consensus:** the label is the **intersection** of NVD's and the CNA's rolled-up CWE sets; CVEs with no agreement are dropped. 4. **Filtering:** REJECTED/DISPUTED CVEs, non-English and too-short (<40 char) descriptions are dropped; pseudo-labels (`NVD-CWE-noinfo`/`-Other`) are excluded. 5. **De-duplication:** near-duplicate descriptions (MinHash, Jaccard ≥ 0.7) are grouped into families, and **whole families stay within a single split**, so near-identical text cannot leak across train/validation/test (verified: 0 shared descriptions across splits). 6. **Split:** dedup-family-aware, ~80/10/10. ## Provenance (reproducibility) | Source | Version | |---|---| | cvelistV5 | commit `7f860dcfb8260ccff2f23b4b5f685303fd314f17` | | NVD | pulled 2026-05-29 | | MITRE CWE | v4.20 | ## Statistics - **Keep rate:** 115,636 of 354,163 scanned CVEs reach consensus (~33%); after the low-information filter, the rarest-CWE floor, and hard-weighted capping, **71,640** rows are exported. Most drops are "no consensus" (sources disagreed, or only one assigned a CWE). - **Easy/hard composition (v3):** the weakness is lexically named in ~**20%** of train rows (hard-weighted) vs ~**44%** of validation/test (natural prevalence). - **Recency skew:** consensus concentrates on **2023+** CVEs, because that is when CNAs began reliably populating CWE — this is the main coverage bias. - **Label space:** 127 distinct View-1003 CWEs appear in the consensus set; a minimum-examples floor (50) prunes the rarest, leaving ~117 effective labels. The distribution is long-tailed (CWE-79 most common). - **Cardinality:** most examples carry a single label; ~14% carry two or more. ## Intended use Fine-tuning or evaluating models that classify CVE descriptions into CWE types (vulnerability triage, enrichment, prioritization aids). Held-out `test` is intended for measuring multi-label performance (e.g. exact-match and micro/macro F1). ## Limitations & biases - **Recency-skewed (2023+)** — weaker coverage of older CVE styles. - **Consensus is high-precision, not exhaustive** — CVEs where the two sources disagree (often genuinely ambiguous) are excluded, so this set is "cleaner/easier" than the full CVE population. - **Roll-up to View-1003** discards sub-View-1003 specificity (variant-level CWEs map to their base). - **English only.** - Not a substitute for analyst review on novel or complex vulnerabilities. ## License & attribution Released under **CC BY 4.0**. The dataset derives from public sources; please also honor their terms: - **NVD** (NIST) — U.S. Government work, public domain. - **CVE Program / cvelistV5** — © the CVE Program; CVE Records are free to use with attribution. - **MITRE CWE** — © The MITRE Corporation; free to use with attribution. CWE™ and CVE® are trademarks of The MITRE Corporation. ## Citation ```bibtex @misc{cve_cwe_consensus_2026, title = {CVE-to-CWE Consensus Dataset}, author = {exploitintel}, year = {2026}, howpublished = {Hugging Face Hub}, url = {https://huggingface.co/datasets/exploitintel/cve-cwe-consensus} } ```