
[23] Simon Du - Gradient Descent for Non-convex Problems in Modern Machine Learning
The Thesis Review
Navigating Non-Convex Challenges in Machine Learning
This chapter discusses the intricacies of addressing non-convex problems in modern machine learning, emphasizing the significance of proper problem formulation. It also provides insights on reading academic papers, highlighting strategies for both newcomers and experienced researchers in grasping key concepts efficiently.
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