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---
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<n<1M
dataset_info:
  features:
  - name: messages
    list:
    - name: role
      dtype: string
    - name: content
      dtype: string
  splits:
  - name: train
    num_bytes: 28397024
    num_examples: 50074
  - name: validation
    num_bytes: 5966749
    num_examples: 11052
  - name: test
    num_bytes: 5748623
    num_examples: 10514
  download_size: 39961558
  dataset_size: 40112396
configs:
- config_name: default
  data_files:
  - split: train
    path: data/train-*
  - split: validation
    path: data/validation-*
  - split: test
    path: data/test-*
---

# CVE-to-CWE Consensus Dataset

A multi-label dataset mapping **CVE vulnerability descriptions** to their **CWE weakness type(s)**, built for fine-tuning instruction-tuned LLMs (e.g. with [Unsloth](https://unsloth.ai)). Each label is a **consensus** assignment: a CWE is kept only when **NVD and the CVE Numbering Authority (CNA) independently agree** on it, after rolling both up to **CWE View-1003** (the ~130-weakness "Weaknesses for Simplified Mapping of Published Vulnerabilities").

## TL;DR

- **Task:** given a CVE description, predict the CWE ID(s) — multi-label.
- **71,640 examples** — train 50,074 / validation 11,052 / test 10,514. *(v3 — see "What's new in v3")*
- **Format:** conversational `messages` (system / user / assistant), ready for chat-template SFT.
- **Trust model:** labels are the **intersection** of two independent official sources (NVD + CNA), so single-source errors are excluded by construction.

## What's new in v3

This `v3` revision is re-weighted to train models on the cases they actually fail
(inferring the CWE when the description does not name the weakness), and to evaluate
them honestly. Changes vs. the previous revision:

- **Low-information filter:** bare impact-title descriptions ("`<Product> <Impact>
  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}
}
```