Eigenvalue Distribution for Non Linear Models of Random Matrices
Offered By: ICTP Mathematics via YouTube
Course Description
Overview
Explore the intricacies of eigenvalue distribution in non-linear random matrix models through this 43-minute lecture by Sandrine PECHE from Université Paris Diderot, France. Delivered as part of the School and Workshop on Random Matrix Theory and Point Processes, delve into topics such as the Holman cuckoo, Bennington vom, MuF limits, and batch normalization. Examine the moment method, encoding techniques, and matching processes. Gain insights into identifying key elements within these complex mathematical structures before reaching the concluding remarks.
Syllabus
Introduction
Plan
Motivation
Holman cuckoo
Bennington vom
MuF
Limits
Batch normalization
Moment method
Encoding
Matching
Identifying
Conclusion
Taught by
ICTP Mathematics
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