
[23] Simon Du - Gradient Descent for Non-convex Problems in Modern Machine Learning
The Thesis Review
Intro
This chapter delves into the challenges of gradient descent in non-convex scenarios within machine learning, showcasing key theoretical results and discussing the neural tangent kernel. It also provides practical tips for engaging with research papers, catering to both emerging and experienced researchers.
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