Paper detail

Guided Learning of Nonconvex Models through Successive Functional Gradient Optimization

This paper presents a framework of successive functional gradient optimization for training nonconvex models such as neural networks, where training is driven by mirror descent in a function space. We provide a theoretical analysis and empirical study of the training method derived from this framework. It is shown that the method leads to better performance than that of standard training techniques.

preprint2020arXivOpen access
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