English

Topics in Random Matrices and Statistical Machine Learning

Machine Learning 2018-07-26 v1 Machine Learning Probability

Abstract

This thesis consists of two independent parts: random matrices, which form the first one-third of this thesis, and machine learning, which constitutes the remaining part. The main results of this thesis are as follows: a necessary and sufficient condition for the inverse moments of (m,n,β)(m,n,\beta)-Laguerre matrices and compound Wishart matrices to be finite; the universal weak consistency and the strong consistency of the kk-nearest neighbor rule in metrically sigma-finite dimensional spaces and metrically finite dimensional spaces respectively. In Part I, the Chapter 1 introduces the (m,n,β)(m,n,\beta)-Laguerre matrix, Wishart and compound Wishart matrix and their joint eigenvalue distribution. While in Chapter 2, a necessary and sufficient condition to have finite inverse moments has been derived. In Part II, the Chapter 1 introduces the various notions of metric dimension and differentiation property followed by our proof for the necessary part of Preiss' result. Further, Chapter 2 gives an introduction to the mathematical concepts in statistical machine learning and then the kk-nearest neighbor rule is presented in Chapter 3 with a proof of Stone's theorem. In chapters 4 and 5, we present our main results and some possible future directions based on it.

Keywords

Cite

@article{arxiv.1807.09419,
  title  = {Topics in Random Matrices and Statistical Machine Learning},
  author = {Sushma Kumari},
  journal= {arXiv preprint arXiv:1807.09419},
  year   = {2018}
}

Comments

125 pages, 11 figures, 2 flow-diagrams, Doctoral thesis in Mathematics defended in July 2018 at Department of Mathematics, Kyoto University (Supervisors: Dr. Beno${\^i}$t Collins and Dr. Vladimir G. Pestov)

R2 v1 2026-06-23T03:13:27.488Z