Can We Gain More from Orthogonality Regularizations in Training Deep Networks?
–Neural Information Processing Systems
This paper seeks to answer the question: as the (near-) orthogonality of weights is found to be a favorable property for training deep convolutional neural networks, how can we enforce it in more effective and easy-to-use ways? We develop novel orthogonality regularizations on training deep CNNs, utilizing various advanced analytical tools such as mutual coherence and restricted isometry property. These plug-and-play regularizations can be conveniently incorporated into training almost any CNN without extra hassle.
Neural Information Processing Systems
Mar-17-2026, 00:35:30 GMT
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