Text Generation
fastText
Standard Moroccan Tamazight
wikilangs
nlp
tokenizer
embeddings
n-gram
markov
wikipedia
feature-extraction
sentence-similarity
tokenization
n-grams
markov-chain
text-mining
babelvec
vocabulous
vocabulary
monolingual
family-berber
Instructions to use wikilangs/zgh with libraries, inference providers, notebooks, and local apps. Follow these links to get started.
- Libraries
- fastText
How to use wikilangs/zgh with fastText:
from huggingface_hub import hf_hub_download import fasttext model = fasttext.load_model(hf_hub_download("wikilangs/zgh", "model.bin")) - Notebooks
- Google Colab
- Kaggle
| language: zgh | |
| language_name: Standard Moroccan Tamazight | |
| language_family: berber | |
| tags: | |
| - wikilangs | |
| - nlp | |
| - tokenizer | |
| - embeddings | |
| - n-gram | |
| - markov | |
| - wikipedia | |
| - feature-extraction | |
| - sentence-similarity | |
| - tokenization | |
| - n-grams | |
| - markov-chain | |
| - text-mining | |
| - fasttext | |
| - babelvec | |
| - vocabulous | |
| - vocabulary | |
| - monolingual | |
| - family-berber | |
| license: mit | |
| library_name: wikilangs | |
| pipeline_tag: text-generation | |
| datasets: | |
| - omarkamali/wikipedia-monthly | |
| dataset_info: | |
| name: wikipedia-monthly | |
| description: Monthly snapshots of Wikipedia articles across 300+ languages | |
| metrics: | |
| - name: best_compression_ratio | |
| type: compression | |
| value: 3.844 | |
| - name: best_isotropy | |
| type: isotropy | |
| value: 0.7259 | |
| - name: vocabulary_size | |
| type: vocab | |
| value: 0 | |
| generated: 2026-01-11 | |
| # Standard Moroccan Tamazight - Wikilangs Models | |
| ## Comprehensive Research Report & Full Ablation Study | |
| This repository contains NLP models trained and evaluated by Wikilangs, specifically on **Standard Moroccan Tamazight** Wikipedia data. | |
| We analyze tokenizers, n-gram models, Markov chains, vocabulary statistics, and word embeddings. | |
| ## 📋 Repository Contents | |
| ### Models & Assets | |
| - Tokenizers (8k, 16k, 32k, 64k) | |
| - N-gram models (2, 3, 4, 5-gram) | |
| - Markov chains (context of 1, 2, 3, 4 and 5) | |
| - Subword N-gram and Markov chains | |
| - Embeddings in various sizes and dimensions (aligned and unaligned) | |
| - Language Vocabulary | |
| - Language Statistics | |
|  | |
| ### Analysis and Evaluation | |
| - [1. Tokenizer Evaluation](#1-tokenizer-evaluation) | |
| - [2. N-gram Model Evaluation](#2-n-gram-model-evaluation) | |
| - [3. Markov Chain Evaluation](#3-markov-chain-evaluation) | |
| - [4. Vocabulary Analysis](#4-vocabulary-analysis) | |
| - [5. Word Embeddings Evaluation](#5-word-embeddings-evaluation) | |
| - [6. Morphological Analysis (Experimental)](#6--morphological-analysis-experimental) | |
| - [7. Summary & Recommendations](#7-summary--recommendations) | |
| - [Metrics Glossary](#appendix-metrics-glossary--interpretation-guide) | |
| - [Visualizations Index](#visualizations-index) | |
| --- | |
| ## 1. Tokenizer Evaluation | |
|  | |
|  | |
|  | |
|  | |
| ### Results | |
| | Vocab Size | Compression | Avg Token Len | UNK Rate | Total Tokens | | |
| |------------|-------------|---------------|----------|--------------| | |
| | **8k** | 3.062x | 3.07 | 0.9549% | 377,124 | | |
| | **16k** | 3.360x | 3.36 | 1.0478% | 343,658 | | |
| | **32k** | 3.609x | 3.61 | 1.1257% | 319,893 | | |
| | **64k** | 3.844x 🏆 | 3.85 | 1.1990% | 300,327 | | |
| ### Tokenization Examples | |
| Below are sample sentences tokenized with each vocabulary size: | |
| **Sample 1:** `thumb ⴱⵉ ⴱⵉ ⵙⵉ ⵏⵖ BBC (ⵙ ⵜⵏⴳⵍⵉⵣⵜ: British Broadcasting Corporation) ⵉⵙⴰⵖⵓⵍⵏ` | |
| | Vocab | Tokens | Count | | |
| |-------|--------|-------| | |
| | 8k | `▁thumb ▁ⴱⵉ ▁ⴱⵉ ▁ⵙⵉ ▁ⵏⵖ ▁b bc ▁( ⵙ ▁ⵜⵏⴳⵍⵉⵣⵜ ... (+16 more)` | 26 | | |
| | 16k | `▁thumb ▁ⴱⵉ ▁ⴱⵉ ▁ⵙⵉ ▁ⵏⵖ ▁bbc ▁( ⵙ ▁ⵜⵏⴳⵍⵉⵣⵜ : ... (+9 more)` | 19 | | |
| | 32k | `▁thumb ▁ⴱⵉ ▁ⴱⵉ ▁ⵙⵉ ▁ⵏⵖ ▁bbc ▁( ⵙ ▁ⵜⵏⴳⵍⵉⵣⵜ : ... (+8 more)` | 18 | | |
| | 64k | `▁thumb ▁ⴱⵉ ▁ⴱⵉ ▁ⵙⵉ ▁ⵏⵖ ▁bbc ▁( ⵙ ▁ⵜⵏⴳⵍⵉⵣⵜ : ... (+5 more)` | 15 | | |
| **Sample 2:** `ⴰⴳⴰⴷⴰⵣ ⴰⴼⵕⴰⵏⵚⵉⵚ ⵉⴳⴰ ⴰⴳⴷⵓⵣ ⴷ ⴰⵙⴷⴷⵉ ⵏ ⵡⴰⵙⵖⵏⵣⵉ ⴳ ⵜⴰⴷⴷⵓⵔⵜ ⵜⴰⴼⵕⴰⵏⵚⵉⵚⵜ, ⵏ ⵓⵔⵍⵢⴰⵏⵣ ⴰⵎⴰⵢ...` | |
| | Vocab | Tokens | Count | | |
| |-------|--------|-------| | |
| | 8k | `▁ⴰⴳⴰ ⴷⴰⵣ ▁ⴰⴼⵕⴰⵏⵚⵉⵚ ▁ⵉⴳⴰ ▁ⴰⴳⴷ ⵓⵣ ▁ⴷ ▁ⴰⵙⴷⴷⵉ ▁ⵏ ▁ⵡⴰⵙ ... (+19 more)` | 29 | | |
| | 16k | `▁ⴰⴳⴰⴷⴰⵣ ▁ⴰⴼⵕⴰⵏⵚⵉⵚ ▁ⵉⴳⴰ ▁ⴰⴳⴷ ⵓⵣ ▁ⴷ ▁ⴰⵙⴷⴷⵉ ▁ⵏ ▁ⵡⴰⵙ ⵖⵏⵣⵉ ... (+17 more)` | 27 | | |
| | 32k | `▁ⴰⴳⴰⴷⴰⵣ ▁ⴰⴼⵕⴰⵏⵚⵉⵚ ▁ⵉⴳⴰ ▁ⴰⴳⴷ ⵓⵣ ▁ⴷ ▁ⴰⵙⴷⴷⵉ ▁ⵏ ▁ⵡⴰⵙ ⵖⵏⵣⵉ ... (+17 more)` | 27 | | |
| | 64k | `▁ⴰⴳⴰⴷⴰⵣ ▁ⴰⴼⵕⴰⵏⵚⵉⵚ ▁ⵉⴳⴰ ▁ⴰⴳⴷ ⵓⵣ ▁ⴷ ▁ⴰⵙⴷⴷⵉ ▁ⵏ ▁ⵡⴰⵙ ⵖⵏⵣⵉ ... (+11 more)` | 21 | | |
| **Sample 3:** `ⵄⴱⴷⵍⴼⵜⵜⴰⵃ ⵙⵙⵉⵙⵉ (ⵙ ⵜⴰⵄⵕⴰⴱⵜ: عبد الفتاح السيسي), ⵉⵍⵓⵍ ⴳ 19 ⵏⵓⵡⴰⵏⴱⵉⵔ ⴳ ⵜⵇⴰⵀⵉⵔⵜ, ⵉⴳ...` | |
| | Vocab | Tokens | Count | | |
| |-------|--------|-------| | |
| | 8k | `▁ⵄⴱⴷ ⵍⴼ ⵜⵜⴰ ⵃ ▁ⵙⵙⵉ ⵙⵉ ▁( ⵙ ▁ⵜⴰⵄⵕⴰⴱⵜ : ... (+40 more)` | 50 | | |
| | 16k | `▁ⵄⴱⴷ ⵍⴼ ⵜⵜⴰ ⵃ ▁ⵙⵙⵉ ⵙⵉ ▁( ⵙ ▁ⵜⴰⵄⵕⴰⴱⵜ : ... (+38 more)` | 48 | | |
| | 32k | `▁ⵄⴱⴷⵍⴼ ⵜⵜⴰⵃ ▁ⵙⵙⵉⵙⵉ ▁( ⵙ ▁ⵜⴰⵄⵕⴰⴱⵜ : ▁عبد ▁الف ت ... (+34 more)` | 44 | | |
| | 64k | `▁ⵄⴱⴷⵍⴼ ⵜⵜⴰⵃ ▁ⵙⵙⵉⵙⵉ ▁( ⵙ ▁ⵜⴰⵄⵕⴰⴱⵜ : ▁عبد ▁الفتاح ▁السيسي ... (+27 more)` | 37 | | |
| ### Key Findings | |
| - **Best Compression:** 64k achieves 3.844x compression | |
| - **Lowest UNK Rate:** 8k with 0.9549% unknown tokens | |
| - **Trade-off:** Larger vocabularies improve compression but increase model size | |
| - **Recommendation:** 32k vocabulary provides optimal balance for production use | |
| --- | |
| ## 2. N-gram Model Evaluation | |
|  | |
|  | |
|  | |
| ### Results | |
| | N-gram | Variant | Perplexity | Entropy | Unique N-grams | Top-100 Coverage | Top-1000 Coverage | | |
| |--------|---------|------------|---------|----------------|------------------|-------------------| | |
| | **2-gram** | Word | 1,196 | 10.22 | 27,047 | 45.0% | 79.1% | | |
| | **2-gram** | Subword | 278 🏆 | 8.12 | 3,951 | 66.4% | 98.7% | | |
| | **3-gram** | Word | 1,791 | 10.81 | 50,741 | 39.8% | 75.1% | | |
| | **3-gram** | Subword | 1,389 | 10.44 | 30,764 | 34.7% | 83.1% | | |
| | **4-gram** | Word | 3,181 | 11.64 | 96,325 | 36.3% | 68.2% | | |
| | **4-gram** | Subword | 3,814 | 11.90 | 123,122 | 22.6% | 70.8% | | |
| | **5-gram** | Word | 3,890 | 11.93 | 104,452 | 36.6% | 65.2% | | |
| | **5-gram** | Subword | 6,884 | 12.75 | 251,758 | 17.4% | 65.2% | | |
| ### Top 5 N-grams by Size | |
| **2-grams (Word):** | |
| | Rank | N-gram | Count | | |
| |------|--------|-------| | |
| | 1 | `ⵜⴳⵎⵉⴹⵉ ⵏ` | 30,065 | | |
| | 2 | `ⵏ ⵓⵙⴳⴳⵯⴰⵙ` | 27,531 | | |
| | 3 | `ⵓⵎⴹⴰⵏ ⵏ` | 26,944 | | |
| | 4 | `ⵏ ⵉⵎⵣⴷⴰⵖⵏ` | 24,199 | | |
| | 5 | `ⵜⵍⴽⵎ ⵜⴳⵎⵉⴹⵉ` | 24,115 | | |
| **3-grams (Word):** | |
| | Rank | N-gram | Count | | |
| |------|--------|-------| | |
| | 1 | `ⵜⵍⴽⵎ ⵜⴳⵎⵉⴹⵉ ⵏ` | 24,115 | | |
| | 2 | `ⵓⵎⴹⴰⵏ ⵏ ⵉⵎⵣⴷⴰⵖⵏ` | 14,960 | | |
| | 3 | `ⵜⴰⵎⴰⵜⵜⴰⵢⵜ ⵏ ⵓⵙⵖⵉⵡⵙ` | 14,959 | | |
| | 4 | `ⵜⴰⵙⵎⵉⵔⵉⵜ ⵜⴰⵎⴰⵜⵜⴰⵢⵜ ⵏ` | 14,958 | | |
| | 5 | `ⴳ ⵜⵍⴽⵎ ⵜⴳⵎⵉⴹⵉ` | 12,063 | | |
| **4-grams (Word):** | |
| | Rank | N-gram | Count | | |
| |------|--------|-------| | |
| | 1 | `ⵜⴰⵙⵎⵉⵔⵉⵜ ⵜⴰⵎⴰⵜⵜⴰⵢⵜ ⵏ ⵓⵙⵖⵉⵡⵙ` | 14,958 | | |
| | 2 | `ⴳ ⵜⵍⴽⵎ ⵜⴳⵎⵉⴹⵉ ⵏ` | 12,063 | | |
| | 3 | `ⵓⵎⴹⴰⵏ ⵏ ⵉⵎⵣⴷⴰⵖⵏ ⵏⵏⵙ` | 8,928 | | |
| | 4 | `ⵉⵎⵣⴷⴰⵖⵏ ⵜⴰⵙⵎⵉⵔⵉⵜ ⵜⴰⵎⴰⵜⵜⴰⵢⵜ ⵏ` | 8,927 | | |
| | 5 | `ⴰⵎⴰⵜⴰⵢ ⵏ ⵉⵎⵣⴷⴰⵖⵏ ⵜⴰⵙⵎⵉⵔⵉⵜ` | 8,927 | | |
| **5-grams (Word):** | |
| | Rank | N-gram | Count | | |
| |------|--------|-------| | |
| | 1 | `ⵏ ⵉⵎⵣⴷⴰⵖⵏ ⵜⴰⵙⵎⵉⵔⵉⵜ ⵜⴰⵎⴰⵜⵜⴰⵢⵜ ⵏ` | 8,927 | | |
| | 2 | `ⴰⵎⴰⵜⴰⵢ ⵏ ⵉⵎⵣⴷⴰⵖⵏ ⵜⴰⵙⵎⵉⵔⵉⵜ ⵜⴰⵎⴰⵜⵜⴰⵢⵜ` | 8,927 | | |
| | 3 | `ⵉⵎⵣⴷⴰⵖⵏ ⵜⴰⵙⵎⵉⵔⵉⵜ ⵜⴰⵎⴰⵜⵜⴰⵢⵜ ⵏ ⵓⵙⵖⵉⵡⵙ` | 8,927 | | |
| | 4 | `ⵉⴹⴼⴰⵕ ⵓⵙⵓⵏ ⴰⴷ ⵉ ⵜⵔⴼⵉⵇⵜ` | 8,926 | | |
| | 5 | `ⵍⵎⵖⵔⵉⴱ ⵉⴹⴼⴰⵕ ⵓⵙⵓⵏ ⴰⴷ ⵉ` | 8,926 | | |
| **2-grams (Subword):** | |
| | Rank | N-gram | Count | | |
| |------|--------|-------| | |
| | 1 | `ⵏ _` | 653,035 | | |
| | 2 | `_ ⵏ` | 397,792 | | |
| | 3 | `_ ⵜ` | 364,082 | | |
| | 4 | `_ ⵉ` | 257,899 | | |
| | 5 | `_ ⵓ` | 211,446 | | |
| **3-grams (Subword):** | |
| | Rank | N-gram | Count | | |
| |------|--------|-------| | |
| | 1 | `_ ⵏ _` | 291,650 | | |
| | 2 | `_ ⵜ ⴰ` | 138,650 | | |
| | 3 | `_ ⴳ _` | 115,983 | | |
| | 4 | `ⵏ _ ⵉ` | 106,477 | | |
| | 5 | `ⴰ ⵏ _` | 105,784 | | |
| **4-grams (Subword):** | |
| | Rank | N-gram | Count | | |
| |------|--------|-------| | |
| | 1 | `_ ⵏ _ ⵓ` | 86,083 | | |
| | 2 | `ⵜ _ ⵏ _` | 65,334 | | |
| | 3 | `_ ⵏ _ ⵉ` | 62,419 | | |
| | 4 | `ⵏ _ ⵓ ⵙ` | 60,609 | | |
| | 5 | `_ ⵏ _ ⵜ` | 57,983 | | |
| **5-grams (Subword):** | |
| | Rank | N-gram | Count | | |
| |------|--------|-------| | |
| | 1 | `_ ⵏ _ ⵓ ⵙ` | 51,067 | | |
| | 2 | `ⵎ ⵣ ⴷ ⴰ ⵖ` | 45,993 | | |
| | 3 | `ⴳ ⴳ ⵯ ⴰ ⵙ` | 36,185 | | |
| | 4 | `ⵙ ⴳ ⴳ ⵯ ⴰ` | 36,178 | | |
| | 5 | `_ ⵏ ⵏ ⴰ _` | 35,864 | | |
| ### Key Findings | |
| - **Best Perplexity:** 2-gram (subword) with 278 | |
| - **Entropy Trend:** Decreases with larger n-grams (more predictable) | |
| - **Coverage:** Top-1000 patterns cover ~65% of corpus | |
| - **Recommendation:** 4-gram or 5-gram for best predictive performance | |
| --- | |
| ## 3. Markov Chain Evaluation | |
|  | |
|  | |
|  | |
| ### Results | |
| | Context | Variant | Avg Entropy | Perplexity | Branching Factor | Unique Contexts | Predictability | | |
| |---------|---------|-------------|------------|------------------|-----------------|----------------| | |
| | **1** | Word | 0.6673 | 1.588 | 4.36 | 83,258 | 33.3% | | |
| | **1** | Subword | 1.0864 | 2.123 | 8.88 | 1,091 | 0.0% | | |
| | **2** | Word | 0.2718 | 1.207 | 1.69 | 361,700 | 72.8% | | |
| | **2** | Subword | 0.9804 | 1.973 | 6.14 | 9,682 | 2.0% | | |
| | **3** | Word | 0.0879 | 1.063 | 1.19 | 608,815 | 91.2% | | |
| | **3** | Subword | 0.8161 | 1.761 | 3.76 | 59,433 | 18.4% | | |
| | **4** | Word | 0.0448 🏆 | 1.032 | 1.12 | 719,950 | 95.5% | | |
| | **4** | Subword | 0.5524 | 1.466 | 2.41 | 223,378 | 44.8% | | |
| ### Generated Text Samples (Word-based) | |
| Below are text samples generated from each word-based Markov chain model: | |
| **Context Size 1:** | |
| 1. `ⵏ ⵜⴰⵚⵚⵓⵕⵜ ⵜⴰⵎⵏⴰⴹⵜ ⵏ 800 ⵏ ⵜⴰⵎⴹⵉⵜ ⵙ ⵜⴳⵎⵉⴹⵉ ⵏ ⵍⵎⵏⵣⵍ ⵜⴰⵙⴳⴰ ⵏ ⵓⵙⵍⵎⴷ 95 ⵏ` | |
| 2. `ⴳ ⵜⵍⴽⵎ ⵜⴳⵎⵉⴹⵉ ⵏ ⵜⵎⵍⵙⴰ ⵢⴰⴹⵏⵉ ⵣⵓⵏ ⴷ 11 ⵏ ⵢⵉⵡⵍ ⴰⵎⵣⵡⴰⵔⵓ 33 85 37 5` | |
| 3. `ⴷ ⵉⵔⴰⵔ ⵍⵎⵖⵔⵉⴱ ⵉⴹⴼⴰⵕ ⵓⵙⵓⵏ ⵉⵎⵓⵏⵏ ⵢⵉⵍⵉ ⴳ ⵓⵙⵉⴹⵏ ⴰⵎⴰⴷⴷⵓⴷ ⵏ ⵜⴳⵍⴷⵉⵜ ⵜⴰⵙⴰⵄⵓⴷⵉⵜ ⴳ ⵜⴳⵔⴰⵡⵜ ⵏ` | |
| **Context Size 2:** | |
| 1. `ⵜⴳⵎⵉⴹⵉ ⵏ ⵎⴷⴷ ⵏⵏⴰ ⵥⴹⴰⵕⵏⵉⵏ ⵉ ⵜⵡⵓⵔⵉ 53 52 ⴳ ⴰⵢⵜ ⵄⵍⵍⴰ ⵏⵏⴰ ⴳ ⵍⵍⴰⵏ 5 ⵏ` | |
| 2. `ⵏ ⵓⵙⴳⴳⵯⴰⵙ démographiques et socio économiques de la population et de l habitat de ⵜⴰⵙⵎⵉⵔⵉⵜ ⵜⴰⵎⴰⵜⵜⴰⵢⵜ...` | |
| 3. `ⵓⵎⴹⴰⵏ ⵏ ⵉⵎⵣⴷⴰⵖⵏ ⵏⵏⵙ 75 ⵏ ⵜⵡⵜⵎⵉⵏ ⵜⴰⵡⵊⵉⵡⵉⵏ ⵉⵡⵍ ⴷ ⵜⴰⵔⵡⴰ ⴳ ⴳⴰⵏ ⵡⵉⵏⴰ ⵢⵉⵡⵍⵏ ⴳ ⵓⵙⵓⵏ` | |
| **Context Size 3:** | |
| 1. `ⵜⵍⴽⵎ ⵜⴳⵎⵉⴹⵉ ⵏ ⵜⴰⵔⵙⴽⴽⵉⵍⵜ 50 98 ⴳⵔ ⵉⵔⴱⴰⵏ ⴷ ⵜⵔⴱⴰⵜⵉⵏ ⵏⵏⴰ ⵖⵓⵔ ⴳⵔ 6 ⴷ 11 ⵏ ⵓⵙⴳⴳⵯⴰⵙ` | |
| 2. `ⵓⵎⴹⴰⵏ ⵏ ⵉⵎⵣⴷⴰⵖⵏ ⵏⵏⵙ 122 ⵏ ⵓⵎⵣⴷⴰⵖ ⴳ ⵓⵙⵉⴹⵏ ⴰⵎⴰⴷⴷⵓⴷ ⵏ ⵓⵙⴳⴳⵯⴰⵙ démographiques et socio économiques de la` | |
| 3. `ⵜⴰⵎⴰⵜⵜⴰⵢⵜ ⵏ ⵓⵙⵖⵉⵡⵙ ⴰⵕⵛⵉⴼ 14 ⵖⵓⵛⵜ ⵜⵉⵙⵏⴰⴷⴷⴰⴷⵉⵏ ⵜⵉⵙⵏⴰⴷⴷⴰⴷⵉⵏ ⵜⵉⵎⴰⵜⴰⵢⵉⵏ ⵉⴳⴳⵯⵉⵣ ⵓⵎⴹⴰⵏ ⵏ ⵉⵎⵣⴷⴰⵖⵏ ⵏ ⵜⴰⵖⵣⵓⵜ ⵙ...` | |
| **Context Size 4:** | |
| 1. `ⵜⴰⵙⵎⵉⵔⵉⵜ ⵜⴰⵎⴰⵜⵜⴰⵢⵜ ⵏ ⵓⵙⵖⵉⵡⵙ ⴰⵕⵛⵉⴼ 14 ⵖⵓⵛⵜ ⵜⵉⵙⵏⴰⴷⴷⴰⴷⵉⵏ ⵜⵉⵙⵏⴰⴷⴷⴰⴷⵉⵏ ⵜⵉⵎⴰⵜⴰⵢⵉⵏ ⵉⴳⴳⵯⵉⵣ ⵓⵎⴹⴰⵏ ⵏ ⵉⵎⵣⴷⴰⵖⵏ ⵏ...` | |
| 2. `ⴳ ⵜⵍⴽⵎ ⵜⴳⵎⵉⴹⵉ ⵏ ⵎⴷⴷ ⵏⵏⴰ ⵥⴹⴰⵕⵏⵉⵏ ⵉ ⵜⵡⵓⵔⵉ 55 29 ⴳ ⴰⵢⵜ ⴱⵏ ⵄⴱⴱⵓ ⴰⵔ ⵏⵉⵜ ⵙⵡⵓⵔⵉⵏ ⵏⵉⵖ` | |
| 3. `ⵓⵎⴹⴰⵏ ⵏ ⵉⵎⵣⴷⴰⵖⵏ ⵏⵏⵙ 390 ⵏ ⵓⵎⵣⴷⴰⵖ ⴳ ⵓⵙⵉⴹⵏ ⴰⵎⴰⴷⴷⵓⴷ ⵏ ⵓⵙⴳⴳⵯⴰⵙ démographiques et socio économiques de la...` | |
| ### Generated Text Samples (Subword-based) | |
| Below are text samples generated from each subword-based Markov chain model: | |
| **Context Size 1:** | |
| 1. `_ⵜⴰⵢⵢⵉⵏⴰⵔ_ⴱⵜⴰⵏ_ⵓ` | |
| 2. `ⴰⵖⵉⵜ_ⵖⵜ_ⵇⵏ_ⴳ_non` | |
| 3. `ⵏ_ⵉⵇⵜⴰ_ⵏ_ⵓⵎⴹⵏ_ⴼⵜ` | |
| **Context Size 2:** | |
| 1. `ⵏ_ⴷ_ⵉⴳⴳⵉⵙⵙ_3_ⴰⵍ_ⴰ` | |
| 2. `_ⵏ_ⴰⵎⴰⵏ_ⴳ_ⵓⵙⵙⴰⵖⵏ_` | |
| 3. `_ⵜⵡⵓⵔ_6_ⴽⵓⴷⴰⵖ,_ⵉⵥ` | |
| **Context Size 3:** | |
| 1. `_ⵏ_ⵜⴰⵙⵡⵉⵏ_ⵉⵙⴽⴰⵔⵏⵜ_` | |
| 2. `_ⵜⴰⵡⵓⵔⵉ_4.52%_ⴳⵔ_6` | |
| 3. `_ⴳ_ⵍⵍⴰⵏ_ⵡⵉⵏ:_ⵉⵡⵜⵎⵉ` | |
| **Context Size 4:** | |
| 1. `_ⵏ_ⵓⵍⴰ_ⴳ_ⴳⴰⵏ_ⵡⵉⵏⴰ_ⵢ` | |
| 2. `ⵜ_ⵏ_ⵓⵙⵖⵉⵡⵙ._ⴰⵕⵛⵉⴼ,_` | |
| 3. `_ⵏ_ⵉⵡⵜⵎⴰⵏ_ⴷ_24.85,_` | |
| ### Key Findings | |
| - **Best Predictability:** Context-4 (word) with 95.5% predictability | |
| - **Branching Factor:** Decreases with context size (more deterministic) | |
| - **Memory Trade-off:** Larger contexts require more storage (223,378 contexts) | |
| - **Recommendation:** Context-3 or Context-4 for text generation | |
| --- | |
| ## 4. Vocabulary Analysis | |
|  | |
|  | |
|  | |
| ### Statistics | |
| | Metric | Value | | |
| |--------|-------| | |
| | Vocabulary Size | 35,191 | | |
| | Total Tokens | 2,431,531 | | |
| | Mean Frequency | 69.10 | | |
| | Median Frequency | 4 | | |
| | Frequency Std Dev | 1880.39 | | |
| ### Most Common Words | |
| | Rank | Word | Frequency | | |
| |------|------|-----------| | |
| | 1 | ⵏ | 291,759 | | |
| | 2 | ⴳ | 116,564 | | |
| | 3 | ⴷ | 74,542 | | |
| | 4 | ⵙ | 39,445 | | |
| | 5 | ⵏⵏⴰ | 35,886 | | |
| | 6 | ⴳⵔ | 30,891 | | |
| | 7 | ⵉⵎⵣⴷⴰⵖⵏ | 30,462 | | |
| | 8 | ⵜⴳⵎⵉⴹⵉ | 30,068 | | |
| | 9 | ⵓⵙⴳⴳⵯⴰⵙ | 29,018 | | |
| | 10 | ⵓⵎⴹⴰⵏ | 27,041 | | |
| ### Least Common Words (from vocabulary) | |
| | Rank | Word | Frequency | | |
| |------|------|-----------| | |
| | 1 | ⵓⵎⵙⵙⵉⵥⵉⵕ | 2 | | |
| | 2 | ⵜⵙⵔⴽⵎⵉⵏ | 2 | | |
| | 3 | ⵓⵎⵢⴰⴱⴰ | 2 | | |
| | 4 | fourth | 2 | | |
| | 5 | ⵜⴰⴱⵔⵓⵙⵉⵜ | 2 | | |
| | 6 | ⵜⴰⵙⵏⴽⵜⴰ | 2 | | |
| | 7 | ⵜⵉⵣⵎⵣⴰⵏⵉⵏ | 2 | | |
| | 8 | ⵜⴰⴷⵓⵥⴽⵉⵡⵜ | 2 | | |
| | 9 | ⴰⵎⵥⵕⴷⴳⴰⵔ | 2 | | |
| | 10 | ⵜⴰⵥⵕⵎⴰⵔⴽⵙⵉⵜ | 2 | | |
| ### Zipf's Law Analysis | |
| | Metric | Value | | |
| |--------|-------| | |
| | Zipf Coefficient | 1.2553 | | |
| | R² (Goodness of Fit) | 0.991414 | | |
| | Adherence Quality | **excellent** | | |
| ### Coverage Analysis | |
| | Top N Words | Coverage | | |
| |-------------|----------| | |
| | Top 100 | 67.5% | | |
| | Top 1,000 | 88.5% | | |
| | Top 5,000 | 94.6% | | |
| | Top 10,000 | 96.7% | | |
| ### Key Findings | |
| - **Zipf Compliance:** R²=0.9914 indicates excellent adherence to Zipf's law | |
| - **High Frequency Dominance:** Top 100 words cover 67.5% of corpus | |
| - **Long Tail:** 25,191 words needed for remaining 3.3% coverage | |
| --- | |
| ## 5. Word Embeddings Evaluation | |
|  | |
|  | |
|  | |
|  | |
| ### 5.1 Cross-Lingual Alignment | |
|  | |
|  | |
| ### 5.2 Model Comparison | |
| | Model | Dimension | Isotropy | Semantic Density | Alignment R@1 | Alignment R@10 | | |
| |-------|-----------|----------|------------------|---------------|----------------| | |
| | **mono_32d** | 32 | 0.7259 🏆 | 0.3600 | N/A | N/A | | |
| | **mono_64d** | 64 | 0.5835 | 0.3114 | N/A | N/A | | |
| | **mono_128d** | 128 | 0.1766 | 0.3125 | N/A | N/A | | |
| | **aligned_32d** | 32 | 0.7259 | 0.3745 | 0.0080 | 0.0540 | | |
| | **aligned_64d** | 64 | 0.5835 | 0.3265 | 0.0120 | 0.1240 | | |
| | **aligned_128d** | 128 | 0.1766 | 0.3192 | 0.0360 | 0.1480 | | |
| ### Key Findings | |
| - **Best Isotropy:** mono_32d with 0.7259 (more uniform distribution) | |
| - **Semantic Density:** Average pairwise similarity of 0.3340. Lower values indicate better semantic separation. | |
| - **Alignment Quality:** Aligned models achieve up to 3.6% R@1 in cross-lingual retrieval. | |
| - **Recommendation:** 128d aligned for best cross-lingual performance | |
| --- | |
| ## 6. Morphological Analysis (Experimental) | |
| This section presents an automated morphological analysis derived from the statistical divergence between word-level and subword-level models. By analyzing where subword predictability spikes and where word-level coverage fails, we can infer linguistic structures without supervised data. | |
| ### 6.1 Productivity & Complexity | |
| | Metric | Value | Interpretation | Recommendation | | |
| |--------|-------|----------------|----------------| | |
| | Productivity Index | **5.000** | High morphological productivity | Reliable analysis | | |
| | Idiomaticity Gap | **0.001** | Low formulaic content | - | | |
| ### 6.2 Affix Inventory (Productive Units) | |
| These are the most productive prefixes and suffixes identified by sampling the vocabulary for global substitutability patterns. A unit is considered an affix if stripping it leaves a valid stem that appears in other contexts. | |
| #### Productive Prefixes | |
| | Prefix | Examples | | |
| |--------|----------| | |
| | `-ⵜ` | ⵜⵉⵎⵙⵙⵉ, ⵜⴳⵎⴰⵎⵜ, ⵜⵛⴰⵡⵉⵜ | | |
| | `-ⵜⴰ` | ⵜⴰⵎⴰⴽⵓⴷⵜ, ⵜⴰⴱⵕⵕⴰⵏⵉⵢⵜ, ⵜⴰⵇⵇⴰⵢⵜ | | |
| | `-ⵉ` | ⵉⵙⵙⵏⵄⴰⵜ, ⵉⴳⵯⵔⵔⴰⵎⵏ, ⵉⵊ | | |
| | `-ⴰ` | ⴰⵎⵙⵏⴽⴰⵔ, ⴰⵜⵉⵍⵉⴼⵉⵣⵢⵓⵏ, ⴰⵎⵖⵔⵉⴱⵉⵢ | | |
| | `-ⵓ` | ⵓⵊⵔⵉ, ⵓⴳⵜⴷⵉⵙ, ⵓⵔⵔⴰⵡ | | |
| | `-ⵜⵉ` | ⵜⵉⵎⵙⵙⵉ, ⵜⵉⵎⵥⴰⵕⵕⵓⵕⵉⵏ, ⵜⵉⵎⵥⵍⴰⵢⵉⵏ | | |
| | `-ⵍ` | ⵍⵃⵓⵎⴰ, ⵍⵡⴰⴷ, ⵍⴳⵯⵍⵍⴰ | | |
| | `-ⵉⵎ` | ⵉⵎⵥⵉⵏⵛⵓⵜⴰⵏⴱⵉⵔ, ⵉⵎⵢⴰⴳⴰⵔ, ⵉⵎⴷⴰⵏ | | |
| #### Productive Suffixes | |
| | Suffix | Examples | | |
| |--------|----------| | |
| | `-ⵏ` | ⴽⵔⵓⵛⵏ, ⵉⴳⵯⵔⵔⴰⵎⵏ, ⵜⵉⵎⵥⴰⵕⵕⵓⵕⵉⵏ | | |
| | `-ⵜ` | ⵜⴳⵎⴰⵎⵜ, ⵜⵛⴰⵡⵉⵜ, ⵉⵙⵙⵏⵄⴰⵜ | | |
| | `-ⵉⵏ` | ⵜⵉⵎⵥⴰⵕⵕⵓⵕⵉⵏ, ⵣⵣⵏⵣⴰⵏⵉⵏ, ⵜⵉⵎⵥⵍⴰⵢⵉⵏ | | |
| | `-ⴰ` | ⴱⵓⴷⴰ, ⵊⴰⵎⴰⵢⴽⴰ, ⵍⵃⵓⵎⴰ | | |
| | `-ⵉ` | ⵜⵉⵎⵙⵙⵉ, ⵓⵊⵔⵉ, ⵏⵜⵜⵉⵏⵉ | | |
| | `-ⴰⵏ` | ⵉⴱⵇⵇⴰⵏ, ⵎⵛⴰⵛⴽⴰⵏ, ⵉⵎⴷⴰⵏ | | |
| | `-ⵉⵜ` | ⵜⵛⴰⵡⵉⵜ, ⵜⴰⴷⵉⵏⴰⵎⵉⵜ, ⴱⵓⵜⵓⵏⴼⵉⵜ | | |
| | `-ⵔ` | ⴰⵎⵙⵏⴽⴰⵔ, ⵜⵜⵔ, ⵉⵎⵥⵉⵏⵛⵓⵜⴰⵏⴱⵉⵔ | | |
| ### 6.3 Bound Stems (Lexical Roots) | |
| Bound stems are high-frequency subword units that are semantically cohesive but rarely appear as standalone words. These often correspond to the 'core' of a word that requires inflection or derivation to be valid. | |
| | Stem | Cohesion | Substitutability | Examples | | |
| |------|----------|------------------|----------| | |
| | `ⴰⴷⴷⴰ` | 1.60x | 54 contexts | ⵜⴰⴷⴷⴰ, ⴰⴷⴷⴰⴳ, ⵢⴰⴷⴷⴰ | | |
| | `ⵡⵓⵔⵉ` | 1.73x | 38 contexts | ⵜⵡⵓⵔⵉ, ⵜⵙⵡⵓⵔⵉ, ⴰⵙⵡⵓⵔⵉ | | |
| | `ⴳⴳⴰⵔ` | 1.70x | 24 contexts | ⵉⴳⴳⴰⵔ, ⴳⴳⴰⵔⵏ, ⵓⴳⴳⴰⵔ | | |
| | `ⵓⴳⴳⴰ` | 1.65x | 24 contexts | ⵢⵓⴳⴳⴰ, ⵜⵓⴳⴳⴰ, ⵓⴳⴳⴰⵏ | | |
| | `ⵜⵜⴰⵢ` | 1.71x | 19 contexts | ⴰⵜⵜⴰⵢ, ⵓⵡⵜⵜⴰⵢ, ⵓⵏⵜⵜⴰⵢ | | |
| | `ⴰⵜⵜⴰ` | 1.62x | 22 contexts | ⴰⵜⵜⴰⵢ, ⵎⴰⵜⵜⴰ, ⴰⵜⵜⴰⵖ | | |
| | `ⵎⵉⵔⵉ` | 1.54x | 21 contexts | ⵉⵎⵉⵔⵉ, ⵓⵎⵉⵔⵉⴳ, ⵜⵎⵉⵔⵉⵜ | | |
| | `ⴷⴷⴰⴷ` | 1.66x | 16 contexts | ⵃⴷⴷⴰⴷ, ⵓⴷⴷⴰⴷ, ⵉⴷⴷⴰⴷ | | |
| | `ⴰⵎⴰⵜ` | 1.50x | 17 contexts | ⴰⵎⴰⵜⵓ, ⴰⵎⴰⵜⴰ, ⴰⵎⴰⵜⵜⵓ | | |
| | `ⵙⵍⵎⴷ` | 1.69x | 12 contexts | ⴰⵙⵍⵎⴷ, ⵓⵙⵍⵎⴷ, ⵙⵍⵎⴷⵏ | | |
| | `ⵉⵔⵉⵜ` | 1.59x | 14 contexts | ⵜⵉⵔⵉⵜ, ⵙⵉⵔⵉⵜ, ⵙⴱⵉⵔⵉⵜ | | |
| | `ⴰⵢⵉⵏ` | 1.86x | 9 contexts | ⴼⵍⴰⵢⵉⵏ, ⵜⵎⴷⴰⵢⵉⵏ, ⵜⵓⵎⴰⵢⵉⵏ | | |
| ### 6.4 Affix Compatibility (Co-occurrence) | |
| This table shows which prefixes and suffixes most frequently co-occur on the same stems, revealing the 'stacking' rules of the language's morphology. | |
| | Prefix | Suffix | Frequency | Examples | | |
| |--------|--------|-----------|----------| | |
| | `-ⵜ` | `-ⵜ` | 684 words | ⵜⴰⴱⵔⵓⵜⵉⵙⵜⴰⵏⵜⵉⵜ, ⵜⴰⵏⵓⵍⴼⵓⵜ | | |
| | `-ⵉ` | `-ⵏ` | 523 words | ⵉⴼⵓⵄⵣⵏ, ⵉⵎⵙⴷⵎⴰⵔⵏ | | |
| | `-ⵜ` | `-ⵏ` | 379 words | ⵜⵢⴰⴼⵓⵜⵉⵏ, ⵜⵉⵕⵚⵍⵉⵢⵉⵏ | | |
| | `-ⵜ` | `-ⵉⵏ` | 331 words | ⵜⵢⴰⴼⵓⵜⵉⵏ, ⵜⵉⵕⵚⵍⵉⵢⵉⵏ | | |
| | `-ⵜ` | `-ⵉⵜ` | 130 words | ⵜⴰⴱⵔⵓⵜⵉⵙⵜⴰⵏⵜⵉⵜ, ⵜⴰⵊⵓⴳⵕⴰⴼⵉⵜ | | |
| | `-ⵍ` | `-ⴰ` | 101 words | ⵍⴼⴰⵢⴹⴰ, ⵍⴱⵕⵕⴰⵏⵢⵢⴰ | | |
| | `-ⵜ` | `-ⴰ` | 74 words | ⵜⵜⵓⴱⵏⴰ, ⵜⴰⵎⴰ | | |
| | `-ⵉ` | `-ⴰⵏ` | 63 words | ⵉⵎⵛⴰⵛⴽⴰⵏ, ⵉⵡⴷⴰⵏ | | |
| | `-ⴰ` | `-ⵏ` | 58 words | ⴰⵀⵉⵍⵏ, ⴰⵎⴽⴰⵏ | | |
| | `-ⴰ` | `-ⵉ` | 47 words | ⴰⵎⵣⴳⵉ, ⴰⴷⵡⴰⵍⵉ | | |
| ### 6.5 Recursive Morpheme Segmentation | |
| Using **Recursive Hierarchical Substitutability**, we decompose complex words into their constituent morphemes. This approach handles nested affixes (e.g., `prefix-prefix-root-suffix`). | |
| | Word | Suggested Split | Confidence | Stem | | |
| |------|-----------------|------------|------| | |
| | ⵜⵉⵔⵍⵓⴳⵏⴰⵏⵉⵏ | **`ⵜⵉⵔⵍⵓⴳⵏⴰ-ⵏ-ⵉⵏ`** | 7.5 | `ⵏ` | | |
| | ⵜⴳⵔⴰⵖⵍⴰⵏⵉⵏ | **`ⵜⴳⵔⴰⵖⵍⴰ-ⵏ-ⵉⵏ`** | 7.5 | `ⵏ` | | |
| | ⵜⵜⵄⵕⵕⴱⵏⵉⵏ | **`ⵜⵜⵄⵕⵕⴱ-ⵏ-ⵉⵏ`** | 7.5 | `ⵏ` | | |
| | ⵉⵜⵜⴰⵡⵙⵙⴰⵏⵏ | **`ⵉⵜⵜⴰⵡⵙⵙⴰ-ⵏ-ⵏ`** | 7.5 | `ⵏ` | | |
| | ⵉⵎⵖⵔⴰⴷⴰⵏⵏ | **`ⵉⵎⵖⵔⴰⴷⴰ-ⵏ-ⵏ`** | 7.5 | `ⵏ` | | |
| | ⵜⵉⵎⴰⵙⵉⵏⵉⵏ | **`ⵜⵉⵎⴰⵙ-ⵉⵏ-ⵉⵏ`** | 7.5 | `ⵉⵏ` | | |
| | ⵉⵙⵉⵏⴰⵔⵢⵓⵜⵏ | **`ⵉⵙⵉⵏⴰⵔⵢⵓ-ⵜ-ⵏ`** | 7.5 | `ⵜ` | | |
| | ⵜⵉⵙⵏⵛⵏⵢⴰⵍⴰⵏⵉⵏ | **`ⵜⵉⵙⵏⵛⵏⵢⴰⵍ-ⴰⵏ-ⵉⵏ`** | 7.5 | `ⴰⵏ` | | |
| | ⴽⵔⵉⵙⵜⵢⴰⵏⵓ | **`ⴽⵔⵉⵙⵜⵢⴰ-ⵏ-ⵓ`** | 7.5 | `ⵏ` | | |
| | ⵜⵜⵓⵙⵎⵔⴰⵙⵏⵉⵏ | **`ⵜⵜⵓⵙⵎⵔⴰⵙ-ⵏ-ⵉⵏ`** | 7.5 | `ⵏ` | | |
| | ⵜⵉⵎⵢⴰⵇⴰⵏⵉⵏ | **`ⵜⵉⵎⵢⴰⵇ-ⴰⵏ-ⵉⵏ`** | 7.5 | `ⴰⵏ` | | |
| | ⵜⵉⵏⵎⴹⴰⵏⵉⵏ | **`ⵜⵉⵏⵎⴹ-ⴰⵏ-ⵉⵏ`** | 7.5 | `ⴰⵏ` | | |
| | ⵜⵜⵡⴰⵙⵙⴰⵏⵏⵜ | **`ⵜⵜⵡⴰⵙⵙⴰⵏ-ⵏ-ⵜ`** | 7.5 | `ⵏ` | | |
| | ⵉⵙⵜⵓⴷⵢⵓⵜⵏ | **`ⵉⵙⵜⵓⴷⵢⵓ-ⵜ-ⵏ`** | 7.5 | `ⵜ` | | |
| | ⵉⵜⵜⵓⵙⵖⵥⵏⵏ | **`ⵉⵜⵜⵓⵙⵖⵥ-ⵏ-ⵏ`** | 7.5 | `ⵏ` | | |
| ### 6.6 Linguistic Interpretation | |
| > **Automated Insight:** | |
| The language Standard Moroccan Tamazight shows high morphological productivity. The subword models are significantly more efficient than word models, suggesting a rich system of affixation or compounding. | |
| --- | |
| ## 7. Summary & Recommendations | |
|  | |
| ### Production Recommendations | |
| | Component | Recommended | Rationale | | |
| |-----------|-------------|-----------| | |
| | Tokenizer | **64k BPE** | Best compression (3.84x) | | |
| | N-gram | **2-gram** | Lowest perplexity (278) | | |
| | Markov | **Context-4** | Highest predictability (95.5%) | | |
| | Embeddings | **100d** | Balanced semantic capture and isotropy | | |
| --- | |
| ## Appendix: Metrics Glossary & Interpretation Guide | |
| This section provides definitions, intuitions, and guidance for interpreting the metrics used throughout this report. | |
| ### Tokenizer Metrics | |
| **Compression Ratio** | |
| > *Definition:* The ratio of characters to tokens (chars/token). Measures how efficiently the tokenizer represents text. | |
| > | |
| > *Intuition:* Higher compression means fewer tokens needed to represent the same text, reducing sequence lengths for downstream models. A 3x compression means ~3 characters per token on average. | |
| > | |
| > *What to seek:* Higher is generally better for efficiency, but extremely high compression may indicate overly aggressive merging that loses morphological information. | |
| **Average Token Length (Fertility)** | |
| > *Definition:* Mean number of characters per token produced by the tokenizer. | |
| > | |
| > *Intuition:* Reflects the granularity of tokenization. Longer tokens capture more context but may struggle with rare words; shorter tokens are more flexible but increase sequence length. | |
| > | |
| > *What to seek:* Balance between 2-5 characters for most languages. Arabic/morphologically-rich languages may benefit from slightly longer tokens. | |
| **Unknown Token Rate (OOV Rate)** | |
| > *Definition:* Percentage of tokens that map to the unknown/UNK token, indicating words the tokenizer cannot represent. | |
| > | |
| > *Intuition:* Lower OOV means better vocabulary coverage. High OOV indicates the tokenizer encounters many unseen character sequences. | |
| > | |
| > *What to seek:* Below 1% is excellent; below 5% is acceptable. BPE tokenizers typically achieve very low OOV due to subword fallback. | |
| ### N-gram Model Metrics | |
| **Perplexity** | |
| > *Definition:* Measures how "surprised" the model is by test data. Mathematically: 2^(cross-entropy). Lower values indicate better prediction. | |
| > | |
| > *Intuition:* If perplexity is 100, the model is as uncertain as if choosing uniformly among 100 options at each step. A perplexity of 10 means effectively choosing among 10 equally likely options. | |
| > | |
| > *What to seek:* Lower is better. Perplexity decreases with larger n-grams (more context). Values vary widely by language and corpus size. | |
| **Entropy** | |
| > *Definition:* Average information content (in bits) needed to encode the next token given the context. Related to perplexity: perplexity = 2^entropy. | |
| > | |
| > *Intuition:* High entropy means high uncertainty/randomness; low entropy means predictable patterns. Natural language typically has entropy between 1-4 bits per character. | |
| > | |
| > *What to seek:* Lower entropy indicates more predictable text patterns. Entropy should decrease as n-gram size increases. | |
| **Coverage (Top-K)** | |
| > *Definition:* Percentage of corpus occurrences explained by the top K most frequent n-grams. | |
| > | |
| > *Intuition:* High coverage with few patterns indicates repetitive/formulaic text; low coverage suggests diverse vocabulary usage. | |
| > | |
| > *What to seek:* Depends on use case. For language modeling, moderate coverage (40-60% with top-1000) is typical for natural text. | |
| ### Markov Chain Metrics | |
| **Average Entropy** | |
| > *Definition:* Mean entropy across all contexts, measuring average uncertainty in next-word prediction. | |
| > | |
| > *Intuition:* Lower entropy means the model is more confident about what comes next. Context-1 has high entropy (many possible next words); Context-4 has low entropy (few likely continuations). | |
| > | |
| > *What to seek:* Decreasing entropy with larger context sizes. Very low entropy (<0.1) indicates highly deterministic transitions. | |
| **Branching Factor** | |
| > *Definition:* Average number of unique next tokens observed for each context. | |
| > | |
| > *Intuition:* High branching = many possible continuations (flexible but uncertain); low branching = few options (predictable but potentially repetitive). | |
| > | |
| > *What to seek:* Branching factor should decrease with context size. Values near 1.0 indicate nearly deterministic chains. | |
| **Predictability** | |
| > *Definition:* Derived metric: (1 - normalized_entropy) × 100%. Indicates how deterministic the model's predictions are. | |
| > | |
| > *Intuition:* 100% predictability means the next word is always certain; 0% means completely random. Real text falls between these extremes. | |
| > | |
| > *What to seek:* Higher predictability for text generation quality, but too high (>98%) may produce repetitive output. | |
| ### Vocabulary & Zipf's Law Metrics | |
| **Zipf's Coefficient** | |
| > *Definition:* The slope of the log-log plot of word frequency vs. rank. Zipf's law predicts this should be approximately -1. | |
| > | |
| > *Intuition:* A coefficient near -1 indicates the corpus follows natural language patterns where a few words are very common and most words are rare. | |
| > | |
| > *What to seek:* Values between -0.8 and -1.2 indicate healthy natural language distribution. Deviations may suggest domain-specific or artificial text. | |
| **R² (Coefficient of Determination)** | |
| > *Definition:* Measures how well the linear fit explains the frequency-rank relationship. Ranges from 0 to 1. | |
| > | |
| > *Intuition:* R² near 1.0 means the data closely follows Zipf's law; lower values indicate deviation from expected word frequency patterns. | |
| > | |
| > *What to seek:* R² > 0.95 is excellent; > 0.99 indicates near-perfect Zipf adherence typical of large natural corpora. | |
| **Vocabulary Coverage** | |
| > *Definition:* Cumulative percentage of corpus tokens accounted for by the top N words. | |
| > | |
| > *Intuition:* Shows how concentrated word usage is. If top-100 words cover 50% of text, the corpus relies heavily on common words. | |
| > | |
| > *What to seek:* Top-100 covering 30-50% is typical. Higher coverage indicates more repetitive text; lower suggests richer vocabulary. | |
| ### Word Embedding Metrics | |
| **Isotropy** | |
| > *Definition:* Measures how uniformly distributed vectors are in the embedding space. Computed as the ratio of minimum to maximum singular values. | |
| > | |
| > *Intuition:* High isotropy (near 1.0) means vectors spread evenly in all directions; low isotropy means vectors cluster in certain directions, reducing expressiveness. | |
| > | |
| > *What to seek:* Higher isotropy generally indicates better-quality embeddings. Values > 0.1 are reasonable; > 0.3 is good. Lower-dimensional embeddings tend to have higher isotropy. | |
| **Average Norm** | |
| > *Definition:* Mean magnitude (L2 norm) of word vectors in the embedding space. | |
| > | |
| > *Intuition:* Indicates the typical "length" of vectors. Consistent norms suggest stable training; high variance may indicate some words are undertrained. | |
| > | |
| > *What to seek:* Relatively consistent norms across models. The absolute value matters less than consistency (low std deviation). | |
| **Cosine Similarity** | |
| > *Definition:* Measures angular similarity between vectors, ranging from -1 (opposite) to 1 (identical direction). | |
| > | |
| > *Intuition:* Words with similar meanings should have high cosine similarity. This is the standard metric for semantic relatedness in embeddings. | |
| > | |
| > *What to seek:* Semantically related words should score > 0.5; unrelated words should be near 0. Synonyms often score > 0.7. | |
| **t-SNE Visualization** | |
| > *Definition:* t-Distributed Stochastic Neighbor Embedding - a dimensionality reduction technique that preserves local structure for visualization. | |
| > | |
| > *Intuition:* Clusters in t-SNE plots indicate groups of semantically related words. Spread indicates vocabulary diversity; tight clusters suggest semantic coherence. | |
| > | |
| > *What to seek:* Meaningful clusters (e.g., numbers together, verbs together). Avoid over-interpreting distances - t-SNE preserves local, not global, structure. | |
| ### General Interpretation Guidelines | |
| 1. **Compare within model families:** Metrics are most meaningful when comparing models of the same type (e.g., 8k vs 64k tokenizer). | |
| 2. **Consider trade-offs:** Better performance on one metric often comes at the cost of another (e.g., compression vs. OOV rate). | |
| 3. **Context matters:** Optimal values depend on downstream tasks. Text generation may prioritize different metrics than classification. | |
| 4. **Corpus influence:** All metrics are influenced by corpus characteristics. Wikipedia text differs from social media or literature. | |
| 5. **Language-specific patterns:** Morphologically rich languages (like Arabic) may show different optimal ranges than analytic languages. | |
| ### Visualizations Index | |
| | Visualization | Description | | |
| |---------------|-------------| | |
| | Tokenizer Compression | Compression ratios by vocabulary size | | |
| | Tokenizer Fertility | Average token length by vocabulary | | |
| | Tokenizer OOV | Unknown token rates | | |
| | Tokenizer Total Tokens | Total tokens by vocabulary | | |
| | N-gram Perplexity | Perplexity by n-gram size | | |
| | N-gram Entropy | Entropy by n-gram size | | |
| | N-gram Coverage | Top pattern coverage | | |
| | N-gram Unique | Unique n-gram counts | | |
| | Markov Entropy | Entropy by context size | | |
| | Markov Branching | Branching factor by context | | |
| | Markov Contexts | Unique context counts | | |
| | Zipf's Law | Frequency-rank distribution with fit | | |
| | Vocab Frequency | Word frequency distribution | | |
| | Top 20 Words | Most frequent words | | |
| | Vocab Coverage | Cumulative coverage curve | | |
| | Embedding Isotropy | Vector space uniformity | | |
| | Embedding Norms | Vector magnitude distribution | | |
| | Embedding Similarity | Word similarity heatmap | | |
| | Nearest Neighbors | Similar words for key terms | | |
| | t-SNE Words | 2D word embedding visualization | | |
| | t-SNE Sentences | 2D sentence embedding visualization | | |
| | Position Encoding | Encoding method comparison | | |
| | Model Sizes | Storage requirements | | |
| | Performance Dashboard | Comprehensive performance overview | | |
| --- | |
| ## About This Project | |
| ### Data Source | |
| Models trained on [wikipedia-monthly](https://huggingface.co/datasets/omarkamali/wikipedia-monthly) - a monthly snapshot of Wikipedia articles across 300+ languages. | |
| ### Project | |
| A project by **[Wikilangs](https://wikilangs.org)** - Open-source NLP models for every Wikipedia language. | |
| ### Maintainer | |
| [Omar Kamali](https://omarkamali.com) - [Omneity Labs](https://omneitylabs.com) | |
| ### Citation | |
| If you use these models in your research, please cite: | |
| ```bibtex | |
| @misc{wikilangs2025, | |
| author = {Kamali, Omar}, | |
| title = {Wikilangs: Open NLP Models for Wikipedia Languages}, | |
| year = {2025}, | |
| doi = {10.5281/zenodo.18073153}, | |
| publisher = {Zenodo}, | |
| url = {https://huggingface.co/wikilangs} | |
| institution = {Omneity Labs} | |
| } | |
| ``` | |
| ### License | |
| MIT License - Free for academic and commercial use. | |
| ### Links | |
| - 🌐 Website: [wikilangs.org](https://wikilangs.org) | |
| - 🤗 Models: [huggingface.co/wikilangs](https://huggingface.co/wikilangs) | |
| - 📊 Data: [wikipedia-monthly](https://huggingface.co/datasets/omarkamali/wikipedia-monthly) | |
| - 👤 Author: [Omar Kamali](https://huggingface.co/omarkamali) | |
| - 🤝 Sponsor: [Featherless AI](https://featherless.ai) | |
| --- | |
| *Generated by Wikilangs Models Pipeline* | |
| *Report Date: 2026-01-11 05:56:32* | |