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Dataset for phonikud model
The datasets contains millions of clean Hebrew sentences marked with nikud and additional phonetics marks.
The format is text<TAB>phonemes
Changelog (knesset_nikud - 5 millions lines)
v6
- Fix words with
Otosuch asOtobusorOtomati
v5
- Fix 'Kshe' instead of 'Keshe'
- Fix ALL shva prefix in knesset
v4
- Remove too long lines based on IQR forumula
v3
- Add Shva Na by coding rules (eg
למנרי)
v2
- V1 converted to txt by syllables partitioning and marking hatama
v1
- Base csv from Dicta with Hatama and nikud
Changelog (hedc4 - 2 million lines)
v1
- Made new dataset from https://huggingface.co/datasets/thewh1teagle/heb-text with textphonemes
🛠️ Knesset Dataset Creation Steps
Sourced Raw Text
Downloaded Hebrew parliamentary tweets from the IsraParlTweet dataset (CC-BY-4.0).Normalized & Filtered
- Applied Unicode NFD normalization.
- Kept only clean sentences containing:
\n '!,.?אבגדהוזחטיךכלםמןנסעףפץצקרשת - Result: 7.8 million unvoweled sentences.
Added Niqqud & Metadata
- Used Dicta's diacritizer to add niqqud.
- Extracted morphological metadata for each word (prefixes, POS, stress, etc.).
- Saved to CSV: each row = full sentence, with aligned niqqud and metadata.
Syllabification & Annotation
- Marked stress and prefixes using the metadata.
- Split words into syllables.
Filtered Long Sentences
- Removed outlier-length sentences using the IQR method.
- Result: 5 million cleaned and processed sentences.
Shva Handling
- Applied heuristic rules to identify vocalic shva (e.g., in common prefixes like למנרי).
- Note: Rules are approximate and not strictly based on Academy of Hebrew standards.
Built Word Frequency Lexicon
- Stripped prefixes from words.
- Sorted unique forms by frequency of appearance.
Manual Corrections
- Identified ~1,000 high-frequency words with common stress/shva errors.
- Corrected them manually to improve data quality.
- These corrections impact hundreds of thousands to millions of occurrences.
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