CoNSoLe: Convex Neural Symbolic Learning
–Neural Information Processing Systems
Learning the underlying equation from data is a fundamental problem in many disciplines. Recent advances rely on Neural Networks (NNs) but do not provide theoretical guarantees in obtaining the exact equations owing to the non-convexity of NNs. In this paper, we propose Convex Neural Symbolic Learning (CoNSoLe) to seek convexity under mild conditions. The main idea is to decompose the recovering process into two steps and convexify each step.
Neural Information Processing Systems
Dec-23-2025, 22:17:13 GMT
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