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  3. MS Defense of Lama Niyazi

MS Defense of Lama Niyazi

1 min read · Tue, Jul 28 2020

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Title:  Asymptotic Performance Analysis of the Randomly-Projected RLDA Ensemble Classifier

Date: June 24th, 2019

Thesis topic : An asymptotic study of a particular classifier using random matrix theory tools in order to derive an approximation for its error rate.

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Lama Burhan Niyazi

  • Ph.D. (former), Electrical and Computer Engineering

Random Matrix Theory machine learning

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