BiMol-Diff: A Unified Diffusion Framework for Molecular Generation and Captioning
About
Bridging molecular structures and natural language is essential for controllable design. Autoregressive models struggle with long-range dependencies, while standard diffusion processes apply uniform corruption across positions, which can distort structurally informative tokens. We present BiMol-Diff, a unified diffusion framework for the paired tasks of text-conditioned molecule generation and molecule captioning. Our key component is a token-aware noise schedule that assigns position-dependent corruption based on token recovery difficulty, preserving harder-to-recover substructures during the forward process. On ChEBI-20 and M3-20M, BiMol-Diff improves molecule reconstruction with a 15.4% relative gain in Exact Match and achieves strong captioning results, attaining best BLEU and BERTScore among compared baselines. These results indicate token-aware noising improves fidelity in molecular structure-language modelling.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Molecule Generation | ChEBI-20 (test) | Exact Match26.2 | 26 | |
| Molecule Captioning | M3-20M | BLEU0.567 | 14 |