language: cdo
language_name: CDO
language_family: sinitic_other
tags:
- wikilangs
- nlp
- tokenizer
- embeddings
- n-gram
- markov
- wikipedia
- monolingual
- family-sinitic_other
license: mit
library_name: wikilangs
pipeline_tag: feature-extraction
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: 2.796
- name: best_isotropy
type: isotropy
value: 0.546
- name: vocabulary_size
type: vocab
value: 12714
generated: 2025-12-28T00:00:00.000Z
CDO - Wikilangs Models
Comprehensive Research Report & Full Ablation Study
This repository contains NLP models trained and evaluated by Wikilangs, specifically on CDO 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-gram)
- Markov chains (context of 1, 2, 3 and 4)
- Subword N-gram and Markov chains
- Embeddings in various sizes and dimensions
- Language Vocabulary
- Language Statistics

Analysis and Evaluation
- 1. Tokenizer Evaluation
- 2. N-gram Model Evaluation
- 3. Markov Chain Evaluation
- 4. Vocabulary Analysis
- 5. Word Embeddings Evaluation
- 6. Summary & Recommendations
- Metrics Glossary
- Visualizations Index
1. Tokenizer Evaluation
Results
| Vocab Size | Compression | Avg Token Len | UNK Rate | Total Tokens |
|---|---|---|---|---|
| 32k | 2.562x | 2.54 | 0.0007% | 298,320 |
| 64k | 2.796x 🏆 | 2.77 | 0.0007% | 273,367 |
Tokenization Examples
Below are sample sentences tokenized with each vocabulary size:
Sample 1: Pender Gông (Ĭng-ngṳ̄: Pender County) sê Mī-guók North Carolina gì siŏh ciáh gôn...
| Vocab | Tokens | Count |
|---|---|---|
| 32k | ▁pen der ▁gông ▁( ĭng - ngṳ̄ : ▁pen der ... (+19 more) |
29 |
| 64k | ▁pender ▁gông ▁( ĭng - ngṳ̄ : ▁pender ▁county ) ... (+17 more) |
27 |
Sample 2: `Duâi dâi
Chók-sié
Guó-sié
分類:1170 nièng-dâi`
| Vocab | Tokens | Count |
|---|---|---|
| 32k | ▁duâi ▁dâi ▁chók - sié ▁guó - sié ▁分類 : ... (+7 more) |
17 |
| 64k | ▁duâi ▁dâi ▁chók - sié ▁guó - sié ▁分類 : ... (+7 more) |
17 |
Sample 3: 1000 nièng-dâi téng 1000 nièng 1 nguŏk 1 hô̤ kăi-sṳ̄, gáu 1009 nièng 12 nguŏk 31...
| Vocab | Tokens | Count |
|---|---|---|
| 32k | ▁ 1 0 0 0 ▁nièng - dâi ▁téng ▁ ... (+36 more) |
46 |
| 64k | ▁ 1 0 0 0 ▁nièng - dâi ▁téng ▁ ... (+36 more) |
46 |
Key Findings
- Best Compression: 64k achieves 2.796x compression
- Lowest UNK Rate: 32k with 0.0007% 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 | Perplexity | Entropy | Unique N-grams | Top-100 Coverage | Top-1000 Coverage |
|---|---|---|---|---|---|
| 2-gram | 2,092 🏆 | 11.03 | 13,738 | 34.2% | 70.6% |
| 2-gram | 517 🏆 | 9.01 | 13,773 | 57.4% | 92.0% |
| 3-gram | 6,902 | 12.75 | 35,914 | 23.0% | 49.3% |
| 3-gram | 2,154 | 11.07 | 33,837 | 33.3% | 72.5% |
| 4-gram | 16,500 | 14.01 | 75,913 | 16.0% | 37.8% |
| 4-gram | 6,830 | 12.74 | 94,271 | 22.4% | 53.8% |
Top 5 N-grams by Size
2-grams:
| Rank | N-gram | Count |
|---|---|---|
| 1 | 分類 : |
17,792 |
| 2 | ̤ ng |
9,653 |
| 3 | . 分類 |
8,000 |
| 4 | - guók |
7,750 |
| 5 | - sié |
7,747 |
3-grams:
| Rank | N-gram | Count |
|---|---|---|
| 1 | . 分類 : |
8,000 |
| 2 | gì siŏh ciáh |
5,565 |
| 3 | - ngṳ ̄ |
4,336 |
| 4 | mī - guók |
3,641 |
| 5 | gâe ̤ ng |
3,480 |
4-grams:
| Rank | N-gram | Count |
|---|---|---|
| 1 | sê mī - guók |
3,211 |
| 2 | gì siŏh ciáh gông |
3,000 |
| 3 | ciáh gông . 分類 |
3,000 |
| 4 | gông . 分類 : |
3,000 |
| 5 | siŏh ciáh gông . |
3,000 |
Key Findings
- Best Perplexity: 2-gram with 517
- Entropy Trend: Decreases with larger n-grams (more predictable)
- Coverage: Top-1000 patterns cover ~54% of corpus
- Recommendation: 4-gram or 5-gram for best predictive performance
3. Markov Chain Evaluation
Results
| Context | Avg Entropy | Perplexity | Branching Factor | Unique Contexts | Predictability |
|---|---|---|---|---|---|
| 1 | 0.2803 | 1.214 | 3.49 | 48,699 | 72.0% |
| 1 | 0.3942 | 1.314 | 4.02 | 31,614 | 60.6% |
| 2 | 0.1991 | 1.148 | 1.83 | 169,503 | 80.1% |
| 2 | 0.3616 | 1.285 | 2.00 | 127,156 | 63.8% |
| 3 | 0.1556 | 1.114 | 1.42 | 308,939 | 84.4% |
| 3 | 0.2179 | 1.163 | 1.54 | 253,902 | 78.2% |
| 4 | 0.0983 🏆 | 1.071 | 1.21 | 437,205 | 90.2% |
| 4 | 0.1764 🏆 | 1.130 | 1.38 | 389,634 | 82.4% |
Generated Text Samples
Below are text samples generated from each Markov chain model:
Context Size 1:
- hū siék gì siŏh ciáh gông . 分類 : chĭng - uăng - pū -̤ k nâ sáng ĕu - ngiòng ( 螺洲路 ) guōng - dŏng - dōi -gì dâ ̤ 18 艭 ngiê - guók - guó - dók “ . chók -
Context Size 2:
分類 : 1370 nièng - dâi gì lùng - dŭng - ngŏk liù - giù - dôi̤ ng hók - gióng , dâi - biēu gê ̤ ṳng - sāng - dōng gâe. 分類 : 200 nièng - dâi - mā 分類 : 1300年代
Context Size 3:
. 分類 : minnesota gì gônggì siŏh ciáh dê - ngék - chê . 分類 : hù - báe ̤ k - chiă- ngṳ ̄ : lafayette county ) sê mī - guók gì buô - hông gì sṳ ̆
Context Size 4:
sê mī - guók colorado gì siŏh ciáh gông . 分類 : florida gì gônggông . 分類 : michigan gì gôngsiŏh ciáh gông . 分類 : indiana gì gông
Key Findings
- Best Predictability: Context-4 with 90.2% predictability
- Branching Factor: Decreases with context size (more deterministic)
- Memory Trade-off: Larger contexts require more storage (389,634 contexts)
- Recommendation: Context-3 or Context-4 for text generation
4. Vocabulary Analysis
Statistics
| Metric | Value |
|---|---|
| Vocabulary Size | 12,714 |
| Total Tokens | 590,881 |
| Mean Frequency | 46.47 |
| Median Frequency | 3 |
| Frequency Std Dev | 447.20 |
Most Common Words
| Rank | Word | Frequency |
|---|---|---|
| 1 | gì | 24,268 |
| 2 | 分類 | 17,794 |
| 3 | ng | 16,472 |
| 4 | sê | 15,967 |
| 5 | siŏh | 9,713 |
| 6 | guók | 9,302 |
| 7 | gông | 9,087 |
| 8 | sié | 8,595 |
| 9 | nièng | 7,825 |
| 10 | dâi | 7,699 |
Least Common Words (from vocabulary)
| Rank | Word | Frequency |
|---|---|---|
| 1 | 燈泡厰 | 2 |
| 2 | 搪瓷厰 | 2 |
| 3 | 保溫瓶厰 | 2 |
| 4 | 啤酒厰 | 2 |
| 5 | 福大機械厰 | 2 |
| 6 | 抗生素厰 | 2 |
| 7 | kbo | 2 |
| 8 | 우주항공청 | 2 |
| 9 | cho | 2 |
| 10 | chit | 2 |
Zipf's Law Analysis
| Metric | Value |
|---|---|
| Zipf Coefficient | 1.3995 |
| R² (Goodness of Fit) | 0.979429 |
| Adherence Quality | excellent |
Coverage Analysis
| Top N Words | Coverage |
|---|---|
| Top 100 | 55.6% |
| Top 1,000 | 90.8% |
| Top 5,000 | 97.1% |
| Top 10,000 | 99.1% |
Key Findings
- Zipf Compliance: R²=0.9794 indicates excellent adherence to Zipf's law
- High Frequency Dominance: Top 100 words cover 55.6% of corpus
- Long Tail: 2,714 words needed for remaining 0.9% coverage
5. Word Embeddings Evaluation
Model Comparison
| Model | Vocab Size | Dimension | Avg Norm | Std Norm | Isotropy |
|---|---|---|---|---|---|
| mono_32d | 7,009 | 32 | 4.149 | 1.118 | 0.5460 🏆 |
| mono_64d | 7,009 | 64 | 4.243 | 1.106 | 0.2037 |
| mono_128d | 7,009 | 128 | 4.233 | 1.119 | 0.0381 |
| embeddings_enhanced | 0 | 0 | 0.000 | 0.000 | 0.0000 |
Key Findings
- Best Isotropy: mono_32d with 0.5460 (more uniform distribution)
- Dimension Trade-off: Higher dimensions capture more semantics but reduce isotropy
- Vocabulary Coverage: All models cover 7,009 words
- Recommendation: 100d for balanced semantic capture and efficiency
6. Summary & Recommendations
Production Recommendations
| Component | Recommended | Rationale |
|---|---|---|
| Tokenizer | 32k BPE | Best compression (2.80x) with low UNK rate |
| N-gram | 5-gram | Lowest perplexity (517) |
| Markov | Context-4 | Highest predictability (90.2%) |
| 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
- Compare within model families: Metrics are most meaningful when comparing models of the same type (e.g., 8k vs 64k tokenizer).
- Consider trade-offs: Better performance on one metric often comes at the cost of another (e.g., compression vs. OOV rate).
- Context matters: Optimal values depend on downstream tasks. Text generation may prioritize different metrics than classification.
- Corpus influence: All metrics are influenced by corpus characteristics. Wikipedia text differs from social media or literature.
- 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 - a monthly snapshot of Wikipedia articles across 300+ languages.
Project
A project by Wikilangs - Open-source NLP models for every Wikipedia language.
Maintainer
Citation
If you use these models in your research, please cite:
@misc{wikilangs2025,
author = {Kamali, Omar},
title = {Wikilangs: Open NLP Models for Wikipedia Languages},
year = {2025},
publisher = {HuggingFace},
url = {https://huggingface.co/wikilangs}
institution = {Omneity Labs}
}
License
MIT License - Free for academic and commercial use.
Links
- 🌐 Website: wikilangs.org
- 🤗 Models: huggingface.co/wikilangs
- 📊 Data: wikipedia-monthly
- 👤 Author: Omar Kamali
Generated by Wikilangs Models Pipeline
Report Date: 2025-12-28 16:25:16











