Perspective
Position: Adopt Constraints Over Penalties in Deep Learning
This paper argues that fixed penalty terms are the wrong default for enforcing explicit requirements in deep learning. Instead, when a problem naturally has targets to satisfy, we should solve it as a constrained optimization problem with tailored methods rather than hope that penalty tuning recovers the right trade-off.