AI RESEARCH
Crystal structure prediction using graph neural combinatorial optimization
arXiv CS.LG
•
ArXi:2604.23921v1 Announce Type: new Crystalline materials are widely used in technological applications, yet their discovery remains a significant challenge. As their properties are driven by structure, crystal structure prediction (CSP) methods play a central role in computational approaches aiming to accelerate this process. Previously, CSP has been approached from a combinatorial optimization perspective, with the core challenge of allocating atoms on a fine grid of predefined discrete positions within a unit cell while minimizing their interaction energy.