A Difference-of-Convex Functions Approach to Energy-Based Iterative Reasoning
–Neural Information Processing Systems
While energy-based models have recently proven to be a powerful framework for learning to reason with neural networks, their practical application is still limited by computational cost. That is, existing methods for energy-based iterative reasoning suffer from computational bottlenecks by relying on expensive optimization routines during training and especially during inference.
Neural Information Processing Systems
Jun-11-2026, 07:51:52 GMT
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