--- language: - ar license: other task_categories: - text-generation arxiv: 2512.18834 configs: - config_name: minhash_deduped data_files: - split: train path: data/minhash_deduped/* - config_name: matched data_files: - split: train path: data/consensus/* - config_name: sentence_deduped data_files: - split: train path: data/sentence_deduped/* default: minhash_deduped --- Finetasks benchmark scores, showing AraMix-Matched as SOTA.

MixMinMatch Collection

**AraMix family:** [AraMix](https://huggingface.co/datasets/AdaMLLab/AraMix) (minhash and matched) | [AraMix-domain-classified](https://huggingface.co/datasets/AdaMLLab/AraMix-domain-classified) (with domain labels) | [AraMix-HQ](https://huggingface.co/datasets/AdaMLLab/AraMix-HQ) (model-filtered) AraMix ([https://arxiv.org/abs/2512.18834](https://arxiv.org/abs/2512.18834)) is an Arabic pretraining corpus containing 178 billion tokens across 179 million documents (in the minhash subset). Rather than scraping the web again, AraMix combines seven publicly available Arabic datasets, applies Arabic-specific quality filtering, and performs cross-dataset deduplication. We train a 1.4B parameter language model through nanotron on 30 billion tokens to show that the `matched` subset of AraMix, outperforms the previous state-of-the-art model-free approach, [arabicweb24](https://huggingface.co/datasets/lightonai/ArabicWeb24) (see [Appendix A9 in the Fineweb-2 paper](https://arxiv.org/pdf/2506.20920)). Furthermore, the `minhash_deduped` subset performs on-par with nearly 5 times the total number of tokens. AraMix-Matched also outperforms the previous state-of-the-art model-based approach in pretraining dataset curation, [FineWeb2-HQ](https://huggingface.co/datasets/epfml/FineWeb2-HQ), while being completely model-free and having significantly more tokens. ## Subsets | Subset | Documents | Tokens | Description | |--------|-----------|--------|-------------| | `sentence_deduped` | 167.6M | 158.8B | MinHash + sentence-level deduplication | | `minhash_deduped` | 178.9M | 177.8B | Document-level MinHash deduplication only | | `matched` | 47.9M | 54.1B | Documents appearing in 2+ source datasets | The matched subset uses cross-dataset agreement as a signal for quality. ## Usage ```python from datasets import load_dataset ds = load_dataset("AdaMLLab/AraMix", "sentence_deduped") ds = load_dataset("AdaMLLab/AraMix", "minhash_deduped") ds = load_dataset("AdaMLLab/AraMix", "matched") ``` ## Sources Tokens were counted using `meta-llama/Llama-3.2-3B`'s tokenizer | Source | Tokens (Before) | Tokens (MinHash + Quality Filter) | Tokens (Sent-Dedup) | |--------|-----------------|------------------|---------------------| | CulturaX | 87.4B (19.8%) | 42.1B (23.7%) | 38.4B (24.2%) | | ArabicWeb24 | 40.7B (9.2%) | 35.4B (19.9%) | 31.6B (19.9%) | | HPLT 2.0 | 108.4B (24.5%) | 34.7B (19.5%) | 30.4B (19.1%) | | FineWeb-2 | 67.2B (15.2%) | 27.5B (15.5%) | 24.2B (15.2%) | | C4 | 59.2B (13.4%) | 22.5B (12.7%) | 20.4B (12.9%) | | 101B / ClusterLab | 49.9B (11.3%) | 9.5B (5.3%) | 7.7B (4.8%) | | FinePDFs | 29.7B (6.7%) | 6.3B (3.5%) | 6.1B (3.8%) | | **Total** | **442.5B (100%)** | **177.8B (100%)** | **158.8B (100%)** | ## Pipeline 1. Quality filtering with Arabic-specific thresholds (terminal punctuation, repetition patterns, script ratio) 2. Document-level MinHash deduplication (5-gram shingles, 14 bands, 8 hashes per bucket) 3. Sentence-level deduplication (3-sentence spans, minimum 3 occurrences) ## Citation ```bib @misc{alrashed2025mixminmatch, title={Mix, MinHash, and Match: Cross-Source Agreement for Multilingual Pretraining Datasets}, author={Sultan Alrashed and Francesco Orabona}, year={2025}, eprint={2512.18834v2}, archivePrefix={arXiv}, primaryClass={cs.CL}, url={https://arxiv.org/abs/2512.18834v2}, } ``` ## License See individual source dataset licenses.