Arabic word2vec embeddings trained on OpenSubtitles Part 2
Description
This dataset contains the subs2vec embeddings for Arabic, as presented in https://zenodo.org/records/17243814. The embeddings were trained on large-scale subtitle corpora and represent semantic vector spaces derived from naturalistic language use in films and television from the OpenSubtitles 2018 datasets: https://opus.nlpl.eu/OpenSubtitles/corpus/version/OpenSubtitles.
For this language, we provide all embedding variants explored in the study. Specifically, the dataset includes vectors generated under different combinations of:
- Dimensionality: multiple vector sizes (e.g., 100, 200, 300, …)
- Window size: varying context windows (e.g., 2, 5, 10, …)
- Each file corresponds to a unique configuration (dimension × window size).
Each file contains the vocabulary for that language (column 1) and then the embedding values (columns 2 through dimension size + 1).
If you use this dataset, please cite:
- Manuscript: https://doi.org/10.5281/zenodo.17243812
- Data: This Zenodo dataset (using the DOI provided here)
Files
Files
(49.5 GB)
| Name | Size | |
|---|---|---|
|
md5:494117b7092fd01f1e73fc9deea0d6ec
|
2.2 GB | Download |
|
md5:97133733d404f7986e1cd7d9b3da6629
|
2.2 GB | Download |
|
md5:2bf82a423efd2059ca9abc3a23d45f6a
|
2.2 GB | Download |
|
md5:9561e8fa10207de80bcc61bd61635887
|
3.6 GB | Download |
|
md5:fe1ec96687b760026ffe9c84531184b6
|
3.6 GB | Download |
|
md5:4999d129c9e633084ecf04d573da4851
|
3.6 GB | Download |
|
md5:f9b6235a05ce300611dad765a9f7e13e
|
3.6 GB | Download |
|
md5:e2d002f830d8533781b41c26112534f6
|
3.6 GB | Download |
|
md5:d4c65c696a0f8016a773737e0453476a
|
3.6 GB | Download |
|
md5:ca9065bad923d455d5b7a4d46b1df025
|
3.6 GB | Download |
|
md5:43f9721f87eb2e728e0470f50e20520a
|
3.6 GB | Download |
|
md5:96bd7e4af8eab012926f321dd0e7a42f
|
3.6 GB | Download |
|
md5:94645e3be66b075c374c8cc84338c52b
|
3.6 GB | Download |
|
md5:8d263b74879f1f8606bbc3642469e9dd
|
3.6 GB | Download |
|
md5:08794baae07b04aa0c481a925cadc323
|
3.6 GB | Download |
Additional details
Related works
- Is supplement to
- Standard: 10.5281/zenodo.17243812 (DOI)
Software
- Repository URL
- https://github.com/SemanticPriming/word2manylanguages
- Programming language
- Python , R