CLAug 25, 2025

Speculating LLMs' Chinese Training Data Pollution from Their Tokens

arXiv:2508.17771v23 citationsh-index: 7EMNLP
Originality Incremental advance
AI Analysis

This addresses data quality and ethical concerns in LLM training for researchers and developers, though it is incremental as it builds on known issues with token analysis.

The paper tackles the problem of identifying polluted Chinese tokens (PoC) in LLMs, such as those related to pornography or online gambling, and speculates on training data pollution, finding that over 23% of long Chinese tokens in GPT's vocabulary are PoC and estimating a 0.5% ratio of specific content in GPT-4o's data.

Tokens are basic elements in the datasets for LLM training. It is well-known that many tokens representing Chinese phrases in the vocabulary of GPT (4o/4o-mini/o1/o3/4.5/4.1/o4-mini) are indicating contents like pornography or online gambling. Based on this observation, our goal is to locate Polluted Chinese (PoC) tokens in LLMs and study the relationship between PoC tokens' existence and training data. (1) We give a formal definition and taxonomy of PoC tokens based on the GPT's vocabulary. (2) We build a PoC token detector via fine-tuning an LLM to label PoC tokens in vocabularies by considering each token's both semantics and related contents from the search engines. (3) We study the speculation on the training data pollution via PoC tokens' appearances (token ID). Experiments on GPT and other 23 LLMs indicate that tokens widely exist while GPT's vocabulary behaves the worst: more than 23% long Chinese tokens (i.e., a token with more than two Chinese characters) are either porn or online gambling. We validate the accuracy of our speculation method on famous pre-training datasets like C4 and Pile. Then, considering GPT-4o, we speculate that the ratio of "Yui Hatano" related webpages in GPT-4o's training data is around 0.5%.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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