98 lines
2.0 KiB
Markdown
98 lines
2.0 KiB
Markdown
# Byte-Pair Encoding (BPE)
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## Overview
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Byte-Pair Encoding (BPE) is a simple but powerful text compression and tokenization algorithm.
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Originally introduced as a data compression method, it has been widely adopted in **Natural Language Processing (NLP)** to build subword vocabularies for models such as GPT and BERT.
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---
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## Key Idea
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BPE works by iteratively replacing the most frequent pair of symbols (initially characters) with a new symbol.
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Over time, frequent character sequences (e.g., common morphemes, prefixes, suffixes) are merged into single tokens.
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## Algorithm Steps
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1. **Initialization**
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- Treat each character of the input text as a token.
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2. **Find Frequent Pairs**
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- Count all adjacent token pairs in the sequence.
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3. **Merge Most Frequent Pair**
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- Replace the most frequent pair with a new symbol not used in the text.
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4. **Repeat**
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- Continue until no frequent pairs remain or a desired vocabulary size is reached.
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---
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## Example
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Suppose the data to be encoded is:
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```
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aaabdaaabac
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```
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### Step 1: Merge `"aa"`
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Most frequent pair: `"aa"` → replace with `"Z"`
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```
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ZabdZabac
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Z = aa
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```
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---
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### Step 2: Merge `"ab"`
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Most frequent pair: `"ab"` → replace with `"Y"`
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```
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ZYdZYac
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Y = ab
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Z = aa
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```
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---
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### Step 3: Merge `"ZY"`
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Most frequent pair: `"ZY"` → replace with `"X"`
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```
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XdXac
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X = ZY
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Y = ab
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Z = aa
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```
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---
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At this point, no pairs occur more than once, so the process stops.
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---
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## Decompression
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To recover the original data, replacements are applied in **reverse order**:
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```
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XdXac
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→ ZYdZYac
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→ ZabdZabac
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→ aaabdaaabac
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```
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---
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## Advantages
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- **Efficient vocabulary building**: reduces the need for massive word lists.
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- **Handles rare words**: breaks them into meaningful subword units.
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- **Balances character- and word-level tokenization**.
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---
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## Limitations
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- Does not consider linguistic meaning—merges are frequency-based.
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- May create tokens that are not linguistically natural.
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- Vocabulary is fixed after training.
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