AMGenC: Generating Charge Balanced Amorphous Materials
arXiv cs.LG / 5/1/2026
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Key Points
- The paper introduces AMGenC, a new generative inverse-design method for amorphous materials that ensures generated samples are charge balanced.
- It addresses a key limitation of probabilistic generative models: when element assignments are unconstrained, many generated structures become charge unbalanced and existing approaches cannot effectively fix this.
- AMGenC uses an “element noise” initialization centered on charge balance, plus per-step soft projection and a final discrete projection to steer elements toward exact charge balance during generation.
- The authors report extensive experiments on two amorphous-materials datasets, showing that AMGenC meets its goal without significant additional computational overhead and without reducing inverse-design accuracy.
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