INDIBATOR: Diverse and Fact-Grounded Individuality for Multi-Agent Debate in Molecular Discovery
About
Multi-agent systems have emerged as a powerful paradigm for automating scientific discovery. To differentiate agent behavior in the multi-agent system, current frameworks typically assign generic role-based personas such as ''reviewer'' or ''writer'' or rely on coarse grained keyword-based personas. While functional, this approach oversimplifies how human scientists operate, whose contributions are shaped by their unique research trajectories. In response, we propose INDIBATOR, a framework for molecular discovery that grounds agents in individualized scientist profiles constructed from two modalities: publication history for literature-derived knowledge and molecular history for structural priors. These agents engage in multi-turn debate through proposal, critique, and voting phases. Our evaluation demonstrates that these fine-grained individuality-grounded agents consistently outperform systems relying on coarse-grained personas, achieving competitive or state-of-the-art performance. These results validate that capturing the ``scientific DNA'' of individual agents is essential for high-quality discovery.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Bioactivity-guided Molecule Generation | PMO-1K GSK3β | Top-10 AUC0.942 | 13 | |
| Bioactivity-guided Molecule Generation | PMO-1K DRD2 | Top-10 AUC95 | 13 | |
| Bioactivity-guided Molecule Generation | PMO-1K JNK3 | Top-10 AUC0.914 | 13 | |
| Bioactivity | PMO-1K | Bioactivity (GSK3β)0.942 | 12 | |
| Multi property optimization | PMO-1K | Amlo. Score84.5 | 12 | |
| Rediscovery | PMO-1K | Cele. Score0.821 | 12 |