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Patterned Random Matrices
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Patterned Random Matrices

Patterned Random Matrices

ByArup Bose
Edition 1st Edition
First Published 2018
eBook Published 23 May 2018
Pub. location New York
Imprint Chapman and Hall/CRC
DOIhttps://doi.org/10.1201/9780429488436
Pages 291 pages
eBook ISBN 9780429948893
SubjectsMathematics & Statistics
KeywordsWigner Matrix, Hankel Matrices, Generating Vertices, Link Function, Random Matrices
Get Citation

Get Citation

Bose, A. (2018). Patterned Random Matrices. New York: Chapman and Hall/CRC, https://doi.org/10.1201/9780429488436
ABOUT THIS BOOK

Large dimensional random matrices (LDRM) with specific patterns arise in econometrics, computer science, mathematics, physics, and statistics. This book provides an easy initiation to LDRM. Through a unified approach, we investigate the existence and properties of the limiting spectral distribution (LSD) of different patterned random matrices as the dimension grows. The main ingredients are the method of moments and normal approximation with rudimentary combinatorics for support. Some elementary results from matrix theory are also used. By stretching the moment arguments, we also have a brush with the intriguing but difficult concepts of joint convergence of sequences of random matrices and its ramifications.

This book covers the Wigner matrix, the sample covariance matrix, the Toeplitz matrix, the Hankel matrix, the sample autocovariance matrix and the k-Circulant matrices. Quick and simple proofs of their LSDs are provided and it is shown how the semi-circle law and the Marchenko-Pastur law arise as the LSDs of the first two matrices. Extending the basic approach, we also establish interesting limits for some triangular matrices, band matrices, balanced matrices, and the sample autocovariance matrix. We also study the joint convergence of several patterned matrices, and show that independent Wigner matrices converge jointly and are asymptotically free of other patterned matrices.

Arup Bose is a Professor at the Indian Statistical Institute, Kolkata, India. He is a distinguished researcher in Mathematical Statistics and has been working in high-dimensional random matrices for the last fifteen years. He has been the Editor of Sankyhā for several years and has been on the editorial board of several other journals. He is a Fellow of the Institute of Mathematical Statistics, USA and all three national science academies of India, as well as the recipient of the S.S. Bhatnagar Award and the C.R. Rao Award. His forthcoming books are the monograph, Large Covariance and Autocovariance Matrices (with Monika Bhattacharjee), to be published by Chapman & Hall/CRC Press, and a graduate text, U-statistics, M-estimates and Resampling (with Snigdhansu Chatterjee), to be published by Hindustan Book Agency.

TABLE OF CONTENTS
chapter 1|24 pages
A unified framework
ByArup Bose
View abstract
chapter 2|30 pages
Common symmetric patterned matrices
ByArup Bose
View abstract
chapter 3|41 pages
Patterned X X ′ $ XX^{\prime } $ matrices
ByArup Bose
View abstract
chapter 4|24 pages
k-Circulant matrices
ByArup Bose
View abstract
chapter 5|9 pages
Wigner-type matrices
ByArup Bose
View abstract
chapter 6|12 pages
Balanced Toeplitz and Hankel matrices
ByArup Bose
View abstract
chapter 7|25 pages
Patterned band matrices
ByArup Bose
View abstract
chapter 8|17 pages
Triangular matrices
ByArup Bose
View abstract
chapter 9|13 pages
Joint convergence of i.i.d. patterned matrices
ByArup Bose
View abstract
chapter 10|30 pages
Joint convergence of independent patterned matrices
ByArup Bose
View abstract
chapter 11|22 pages
Autocovariance matrix
ByArup Bose
View abstract

Large dimensional random matrices (LDRM) with specific patterns arise in econometrics, computer science, mathematics, physics, and statistics. This book provides an easy initiation to LDRM. Through a unified approach, we investigate the existence and properties of the limiting spectral distribution (LSD) of different patterned random matrices as the dimension grows. The main ingredients are the method of moments and normal approximation with rudimentary combinatorics for support. Some elementary results from matrix theory are also used. By stretching the moment arguments, we also have a brush with the intriguing but difficult concepts of joint convergence of sequences of random matrices and its ramifications.

This book covers the Wigner matrix, the sample covariance matrix, the Toeplitz matrix, the Hankel matrix, the sample autocovariance matrix and the k-Circulant matrices. Quick and simple proofs of their LSDs are provided and it is shown how the semi-circle law and the Marchenko-Pastur law arise as the LSDs of the first two matrices. Extending the basic approach, we also establish interesting limits for some triangular matrices, band matrices, balanced matrices, and the sample autocovariance matrix. We also study the joint convergence of several patterned matrices, and show that independent Wigner matrices converge jointly and are asymptotically free of other patterned matrices.

Arup Bose is a Professor at the Indian Statistical Institute, Kolkata, India. He is a distinguished researcher in Mathematical Statistics and has been working in high-dimensional random matrices for the last fifteen years. He has been the Editor of Sankyhā for several years and has been on the editorial board of several other journals. He is a Fellow of the Institute of Mathematical Statistics, USA and all three national science academies of India, as well as the recipient of the S.S. Bhatnagar Award and the C.R. Rao Award. His forthcoming books are the monograph, Large Covariance and Autocovariance Matrices (with Monika Bhattacharjee), to be published by Chapman & Hall/CRC Press, and a graduate text, U-statistics, M-estimates and Resampling (with Snigdhansu Chatterjee), to be published by Hindustan Book Agency.

TABLE OF CONTENTS
chapter 1|24 pages
A unified framework
ByArup Bose
View abstract
chapter 2|30 pages
Common symmetric patterned matrices
ByArup Bose
View abstract
chapter 3|41 pages
Patterned X X ′ $ XX^{\prime } $ matrices
ByArup Bose
View abstract
chapter 4|24 pages
k-Circulant matrices
ByArup Bose
View abstract
chapter 5|9 pages
Wigner-type matrices
ByArup Bose
View abstract
chapter 6|12 pages
Balanced Toeplitz and Hankel matrices
ByArup Bose
View abstract
chapter 7|25 pages
Patterned band matrices
ByArup Bose
View abstract
chapter 8|17 pages
Triangular matrices
ByArup Bose
View abstract
chapter 9|13 pages
Joint convergence of i.i.d. patterned matrices
ByArup Bose
View abstract
chapter 10|30 pages
Joint convergence of independent patterned matrices
ByArup Bose
View abstract
chapter 11|22 pages
Autocovariance matrix
ByArup Bose
View abstract
CONTENTS
ABOUT THIS BOOK

Large dimensional random matrices (LDRM) with specific patterns arise in econometrics, computer science, mathematics, physics, and statistics. This book provides an easy initiation to LDRM. Through a unified approach, we investigate the existence and properties of the limiting spectral distribution (LSD) of different patterned random matrices as the dimension grows. The main ingredients are the method of moments and normal approximation with rudimentary combinatorics for support. Some elementary results from matrix theory are also used. By stretching the moment arguments, we also have a brush with the intriguing but difficult concepts of joint convergence of sequences of random matrices and its ramifications.

This book covers the Wigner matrix, the sample covariance matrix, the Toeplitz matrix, the Hankel matrix, the sample autocovariance matrix and the k-Circulant matrices. Quick and simple proofs of their LSDs are provided and it is shown how the semi-circle law and the Marchenko-Pastur law arise as the LSDs of the first two matrices. Extending the basic approach, we also establish interesting limits for some triangular matrices, band matrices, balanced matrices, and the sample autocovariance matrix. We also study the joint convergence of several patterned matrices, and show that independent Wigner matrices converge jointly and are asymptotically free of other patterned matrices.

Arup Bose is a Professor at the Indian Statistical Institute, Kolkata, India. He is a distinguished researcher in Mathematical Statistics and has been working in high-dimensional random matrices for the last fifteen years. He has been the Editor of Sankyhā for several years and has been on the editorial board of several other journals. He is a Fellow of the Institute of Mathematical Statistics, USA and all three national science academies of India, as well as the recipient of the S.S. Bhatnagar Award and the C.R. Rao Award. His forthcoming books are the monograph, Large Covariance and Autocovariance Matrices (with Monika Bhattacharjee), to be published by Chapman & Hall/CRC Press, and a graduate text, U-statistics, M-estimates and Resampling (with Snigdhansu Chatterjee), to be published by Hindustan Book Agency.

TABLE OF CONTENTS
chapter 1|24 pages
A unified framework
ByArup Bose
View abstract
chapter 2|30 pages
Common symmetric patterned matrices
ByArup Bose
View abstract
chapter 3|41 pages
Patterned X X ′ $ XX^{\prime } $ matrices
ByArup Bose
View abstract
chapter 4|24 pages
k-Circulant matrices
ByArup Bose
View abstract
chapter 5|9 pages
Wigner-type matrices
ByArup Bose
View abstract
chapter 6|12 pages
Balanced Toeplitz and Hankel matrices
ByArup Bose
View abstract
chapter 7|25 pages
Patterned band matrices
ByArup Bose
View abstract
chapter 8|17 pages
Triangular matrices
ByArup Bose
View abstract
chapter 9|13 pages
Joint convergence of i.i.d. patterned matrices
ByArup Bose
View abstract
chapter 10|30 pages
Joint convergence of independent patterned matrices
ByArup Bose
View abstract
chapter 11|22 pages
Autocovariance matrix
ByArup Bose
View abstract

Large dimensional random matrices (LDRM) with specific patterns arise in econometrics, computer science, mathematics, physics, and statistics. This book provides an easy initiation to LDRM. Through a unified approach, we investigate the existence and properties of the limiting spectral distribution (LSD) of different patterned random matrices as the dimension grows. The main ingredients are the method of moments and normal approximation with rudimentary combinatorics for support. Some elementary results from matrix theory are also used. By stretching the moment arguments, we also have a brush with the intriguing but difficult concepts of joint convergence of sequences of random matrices and its ramifications.

This book covers the Wigner matrix, the sample covariance matrix, the Toeplitz matrix, the Hankel matrix, the sample autocovariance matrix and the k-Circulant matrices. Quick and simple proofs of their LSDs are provided and it is shown how the semi-circle law and the Marchenko-Pastur law arise as the LSDs of the first two matrices. Extending the basic approach, we also establish interesting limits for some triangular matrices, band matrices, balanced matrices, and the sample autocovariance matrix. We also study the joint convergence of several patterned matrices, and show that independent Wigner matrices converge jointly and are asymptotically free of other patterned matrices.

Arup Bose is a Professor at the Indian Statistical Institute, Kolkata, India. He is a distinguished researcher in Mathematical Statistics and has been working in high-dimensional random matrices for the last fifteen years. He has been the Editor of Sankyhā for several years and has been on the editorial board of several other journals. He is a Fellow of the Institute of Mathematical Statistics, USA and all three national science academies of India, as well as the recipient of the S.S. Bhatnagar Award and the C.R. Rao Award. His forthcoming books are the monograph, Large Covariance and Autocovariance Matrices (with Monika Bhattacharjee), to be published by Chapman & Hall/CRC Press, and a graduate text, U-statistics, M-estimates and Resampling (with Snigdhansu Chatterjee), to be published by Hindustan Book Agency.

TABLE OF CONTENTS
chapter 1|24 pages
A unified framework
ByArup Bose
View abstract
chapter 2|30 pages
Common symmetric patterned matrices
ByArup Bose
View abstract
chapter 3|41 pages
Patterned X X ′ $ XX^{\prime } $ matrices
ByArup Bose
View abstract
chapter 4|24 pages
k-Circulant matrices
ByArup Bose
View abstract
chapter 5|9 pages
Wigner-type matrices
ByArup Bose
View abstract
chapter 6|12 pages
Balanced Toeplitz and Hankel matrices
ByArup Bose
View abstract
chapter 7|25 pages
Patterned band matrices
ByArup Bose
View abstract
chapter 8|17 pages
Triangular matrices
ByArup Bose
View abstract
chapter 9|13 pages
Joint convergence of i.i.d. patterned matrices
ByArup Bose
View abstract
chapter 10|30 pages
Joint convergence of independent patterned matrices
ByArup Bose
View abstract
chapter 11|22 pages
Autocovariance matrix
ByArup Bose
View abstract
ABOUT THIS BOOK
ABOUT THIS BOOK

Large dimensional random matrices (LDRM) with specific patterns arise in econometrics, computer science, mathematics, physics, and statistics. This book provides an easy initiation to LDRM. Through a unified approach, we investigate the existence and properties of the limiting spectral distribution (LSD) of different patterned random matrices as the dimension grows. The main ingredients are the method of moments and normal approximation with rudimentary combinatorics for support. Some elementary results from matrix theory are also used. By stretching the moment arguments, we also have a brush with the intriguing but difficult concepts of joint convergence of sequences of random matrices and its ramifications.

This book covers the Wigner matrix, the sample covariance matrix, the Toeplitz matrix, the Hankel matrix, the sample autocovariance matrix and the k-Circulant matrices. Quick and simple proofs of their LSDs are provided and it is shown how the semi-circle law and the Marchenko-Pastur law arise as the LSDs of the first two matrices. Extending the basic approach, we also establish interesting limits for some triangular matrices, band matrices, balanced matrices, and the sample autocovariance matrix. We also study the joint convergence of several patterned matrices, and show that independent Wigner matrices converge jointly and are asymptotically free of other patterned matrices.

Arup Bose is a Professor at the Indian Statistical Institute, Kolkata, India. He is a distinguished researcher in Mathematical Statistics and has been working in high-dimensional random matrices for the last fifteen years. He has been the Editor of Sankyhā for several years and has been on the editorial board of several other journals. He is a Fellow of the Institute of Mathematical Statistics, USA and all three national science academies of India, as well as the recipient of the S.S. Bhatnagar Award and the C.R. Rao Award. His forthcoming books are the monograph, Large Covariance and Autocovariance Matrices (with Monika Bhattacharjee), to be published by Chapman & Hall/CRC Press, and a graduate text, U-statistics, M-estimates and Resampling (with Snigdhansu Chatterjee), to be published by Hindustan Book Agency.

TABLE OF CONTENTS
chapter 1|24 pages
A unified framework
ByArup Bose
View abstract
chapter 2|30 pages
Common symmetric patterned matrices
ByArup Bose
View abstract
chapter 3|41 pages
Patterned X X ′ $ XX^{\prime } $ matrices
ByArup Bose
View abstract
chapter 4|24 pages
k-Circulant matrices
ByArup Bose
View abstract
chapter 5|9 pages
Wigner-type matrices
ByArup Bose
View abstract
chapter 6|12 pages
Balanced Toeplitz and Hankel matrices
ByArup Bose
View abstract
chapter 7|25 pages
Patterned band matrices
ByArup Bose
View abstract
chapter 8|17 pages
Triangular matrices
ByArup Bose
View abstract
chapter 9|13 pages
Joint convergence of i.i.d. patterned matrices
ByArup Bose
View abstract
chapter 10|30 pages
Joint convergence of independent patterned matrices
ByArup Bose
View abstract
chapter 11|22 pages
Autocovariance matrix
ByArup Bose
View abstract

Large dimensional random matrices (LDRM) with specific patterns arise in econometrics, computer science, mathematics, physics, and statistics. This book provides an easy initiation to LDRM. Through a unified approach, we investigate the existence and properties of the limiting spectral distribution (LSD) of different patterned random matrices as the dimension grows. The main ingredients are the method of moments and normal approximation with rudimentary combinatorics for support. Some elementary results from matrix theory are also used. By stretching the moment arguments, we also have a brush with the intriguing but difficult concepts of joint convergence of sequences of random matrices and its ramifications.

This book covers the Wigner matrix, the sample covariance matrix, the Toeplitz matrix, the Hankel matrix, the sample autocovariance matrix and the k-Circulant matrices. Quick and simple proofs of their LSDs are provided and it is shown how the semi-circle law and the Marchenko-Pastur law arise as the LSDs of the first two matrices. Extending the basic approach, we also establish interesting limits for some triangular matrices, band matrices, balanced matrices, and the sample autocovariance matrix. We also study the joint convergence of several patterned matrices, and show that independent Wigner matrices converge jointly and are asymptotically free of other patterned matrices.

Arup Bose is a Professor at the Indian Statistical Institute, Kolkata, India. He is a distinguished researcher in Mathematical Statistics and has been working in high-dimensional random matrices for the last fifteen years. He has been the Editor of Sankyhā for several years and has been on the editorial board of several other journals. He is a Fellow of the Institute of Mathematical Statistics, USA and all three national science academies of India, as well as the recipient of the S.S. Bhatnagar Award and the C.R. Rao Award. His forthcoming books are the monograph, Large Covariance and Autocovariance Matrices (with Monika Bhattacharjee), to be published by Chapman & Hall/CRC Press, and a graduate text, U-statistics, M-estimates and Resampling (with Snigdhansu Chatterjee), to be published by Hindustan Book Agency.

TABLE OF CONTENTS
chapter 1|24 pages
A unified framework
ByArup Bose
View abstract
chapter 2|30 pages
Common symmetric patterned matrices
ByArup Bose
View abstract
chapter 3|41 pages
Patterned X X ′ $ XX^{\prime } $ matrices
ByArup Bose
View abstract
chapter 4|24 pages
k-Circulant matrices
ByArup Bose
View abstract
chapter 5|9 pages
Wigner-type matrices
ByArup Bose
View abstract
chapter 6|12 pages
Balanced Toeplitz and Hankel matrices
ByArup Bose
View abstract
chapter 7|25 pages
Patterned band matrices
ByArup Bose
View abstract
chapter 8|17 pages
Triangular matrices
ByArup Bose
View abstract
chapter 9|13 pages
Joint convergence of i.i.d. patterned matrices
ByArup Bose
View abstract
chapter 10|30 pages
Joint convergence of independent patterned matrices
ByArup Bose
View abstract
chapter 11|22 pages
Autocovariance matrix
ByArup Bose
View abstract
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