High-Dimensional Probability
3.3 Examples of high-dimensional distributions50 3.4 Sub-gaussian distributions in higher dimensions56 3.5 Application: Grothendieck’s inequality and semide nite programming60 3.6 Application: Maximum cut for graphs66 3.7 Kernel trick, and tightening of Grothendieck’s inequality70 3.8 Notes74 4 Random matrices 76 4.1 Preliminaries on matrices76
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