Hot-Start Chinese Language Modeling:Visual Glyphs Accelerate Sample-Efficient Learning
About
In this work, we study whether rendering Chinese characters as visual glyph images, rather than discrete token IDs as mainstream LLMs do, providing an inductive bias for character-level language modeling. Our central finding gives a double-edged insight: visual inputs produce a pronounced hot-start effect, more than doubling early-stage accuracy within the first epoch (at 0.4% of total training steps) (12.3% visual inputs vs. 5.8% index-based baseline), yet both approaches converge to essentially identical final accuracy (39%). This pattern holds across resolutions as low as 8x8 pixels, partial cropping up to 50%, and model scales from 110M to 1.78B parameters. The mechanism we identify is that glyph rendering pre-encodes radical-based structure into embedding space before any training (cosine similarity 0.27 vs. 0.002 for random embeddings), enabling faster alignment but not higher final capacity. Our results clarify both the promise and fundamental limitation of visual representations as inductive biases for Chinese language modeling.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Character Prediction | THUCNews | Accuracy39.21 | 16 |