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Large Covariance and Autocovariance Matrices brings together a
collection of recent results on sample covariance and
autocovariance matrices in high-dimensional models and novel ideas
on how to use them for statistical inference in one or more
high-dimensional time series models. The prerequisites include
knowledge of elementary multivariate analysis, basic time series
analysis and basic results in stochastic convergence. Part I is on
different methods of estimation of large covariance matrices and
auto-covariance matrices and properties of these estimators. Part
II covers the relevant material on random matrix theory and
non-commutative probability. Part III provides results on limit
spectra and asymptotic normality of traces of symmetric matrix
polynomial functions of sample auto-covariance matrices in
high-dimensional linear time series models. These are used to
develop graphical and significance tests for different hypotheses
involving one or more independent high-dimensional linear time
series. The book should be of interest to people in econometrics
and statistics (large covariance matrices and high-dimensional time
series), mathematics (random matrices and free probability) and
computer science (wireless communication). Parts of it can be used
in post-graduate courses on high-dimensional statistical inference,
high-dimensional random matrices and high-dimensional time series
models. It should be particularly attractive to researchers
developing statistical methods in high-dimensional time series
models. 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 editor of
Sankhya 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 first book Patterned Random
Matrices was also published by Chapman & Hall. He has a
forthcoming graduate text U-statistics, M-estimates and Resampling
(with Snigdhansu Chatterjee) to be published by Hindustan Book
Agency. Monika Bhattacharjee is a post-doctoral fellow at the
Informatics Institute, University of Florida. After graduating from
St. Xavier's College, Kolkata, she obtained her master's in 2012
and PhD in 2016 from the Indian Statistical Institute. Her thesis
in high-dimensional covariance and auto-covariance matrices,
written under the supervision of Dr. Bose, has received high
acclaim.
Large Covariance and Autocovariance Matrices brings together a
collection of recent results on sample covariance and
autocovariance matrices in high-dimensional models and novel ideas
on how to use them for statistical inference in one or more
high-dimensional time series models. The prerequisites include
knowledge of elementary multivariate analysis, basic time series
analysis and basic results in stochastic convergence. Part I is on
different methods of estimation of large covariance matrices and
auto-covariance matrices and properties of these estimators. Part
II covers the relevant material on random matrix theory and
non-commutative probability. Part III provides results on limit
spectra and asymptotic normality of traces of symmetric matrix
polynomial functions of sample auto-covariance matrices in
high-dimensional linear time series models. These are used to
develop graphical and significance tests for different hypotheses
involving one or more independent high-dimensional linear time
series. The book should be of interest to people in econometrics
and statistics (large covariance matrices and high-dimensional time
series), mathematics (random matrices and free probability) and
computer science (wireless communication). Parts of it can be used
in post-graduate courses on high-dimensional statistical inference,
high-dimensional random matrices and high-dimensional time series
models. It should be particularly attractive to researchers
developing statistical methods in high-dimensional time series
models. 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 editor of
Sankhya 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 first book Patterned Random
Matrices was also published by Chapman & Hall. He has a
forthcoming graduate text U-statistics, M-estimates and Resampling
(with Snigdhansu Chatterjee) to be published by Hindustan Book
Agency. Monika Bhattacharjee is a post-doctoral fellow at the
Informatics Institute, University of Florida. After graduating from
St. Xavier's College, Kolkata, she obtained her master's in 2012
and PhD in 2016 from the Indian Statistical Institute. Her thesis
in high-dimensional covariance and auto-covariance matrices,
written under the supervision of Dr. Bose, has received high
acclaim.
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