Cliqueformer: Model-Based Optimization with Structured Transformers
About
Large neural networks excel at prediction tasks, but their application to design problems, such as protein engineering or materials discovery, requires solving offline model-based optimization (MBO) problems. While predictive models may not directly translate to effective design, recent MBO algorithms incorporate reinforcement learning and generative modeling approaches. Meanwhile, theoretical work suggests that exploiting the target function's structure can enhance MBO performance. We present Cliqueformer, a transformer-based architecture that learns the black-box function's structure through functional graphical models (FGM), addressing distribution shift without relying on explicit conservative approaches. Across various domains, including chemical and genetic design tasks, Cliqueformer demonstrates superior performance compared to existing methods.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Model-Based Optimization | Lat. RBF 41 | Expected Top 1% Score66 | 22 | |
| Model-Based Optimization | Lat. RBF 61 | Expected Top 1% Score66 | 22 | |
| Model-Based Optimization | TF Bind 8 | Expected Top 1% Score1.58 | 22 | |
| Model-Based Optimization | Lat. RBF 31 | Expected Top 1% Score0.64 | 22 | |
| Model-Based Optimization | Lat. RBF 11 | Expected Top 1% Score65 | 22 | |
| Model-Based Optimization | DNA k562 | Expected Top-1% Score3.15 | 16 | |
| Design Optimization | superconductor | Top 1% Score1.43 | 14 | |
| Model-Based Optimization | superconductor | Expected Top-1% Score1.43 | 8 | |
| Model-Based Optimization | DNA HEPG2 | Expected Top-1% Score2.1 | 8 | |
| Model-Based Optimization | Lat. RBF 41 | Max Score66 | 6 |