Baisuo Jin
University of Science and Technology of China
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Featured researches published by Baisuo Jin.
Annals of Applied Probability | 2014
Baisuo Jin; Chen Wang; Zhidong Bai; K. Krishnan Nair; Matthew Harding
By Baisuo Jin∗,§, Chen Wang¶ Z. D. Bai†,¶,∥ K. Krishnan Nair∗∗ and Matthew Harding‡,∗∗ University of Science and Technology of China§, National University of Singapore,¶ Northeast Normal University, ∥ and Stanford University∗∗ This paper studies the limiting spectral distribution (LSD) of a symmetrized auto-cross covariance matrix. The auto-cross covariance matrix is defined as Mτ = 1 2T ∑T j=1(eje ∗ j+τ +ej+τe ∗ j ), where ej is an N dimensional vectors of independent standard complex components with properties stated in Theorem (1.1) and τ is the lag. M0 is well studied in the literature whose LSD is the Marčenko-Pastur (MP) Law. The contribution of this paper is in determining the LSD of Mτ where τ ≥ 1. It should be noted that the LSD of the Mτ does not depend on τ . This study raised from the investigation and plays an key role in the model selection of any large dimensional model with a lagged time series structure which are central to large dimensional factor models and singular spectrum analysis. ∗Research of this author was supported by NSF China Young Scientist Grant 11101397 †Research of this author was supported by NSF China 11171057 as well as by Program for Changjiang Scholars and Innovative Research Team in University ‡The research of this author was supported by Stanford Presidential Fund for Innovation in International Studies AMS 2000 subject classifications: Primary 60F15, 15A52, 62H25; secondary 60F05, 60F17
Journal of Multivariate Analysis | 2009
Baisuo Jin; Cheng Wang; Baiqi Miao; Mong-Na Lo Huang
The existence of a limiting spectral distribution (LSD) for a large-dimensional sample covariance matrix generated by the vector autoregressive moving average (VARMA) model is established. In particular, we obtain explicit forms of the LSDs for random matrices generated by a first-order vector autoregressive (VAR(1)) model and a first-order vector moving average (VMA(1)) model, as well as random coefficients for VAR(1) and VMA(1). The parameters for these explicit forms are also estimated. Finally, simulations demonstrate that the results are effective.
Journal of Time Series Analysis | 2011
Cheng Wang; Baisuo Jin; Baiqi Miao
We studied the limiting spectral distribution of large‐dimensional sample covariance matrices of a stationary and invertible VARMA(p,q) model. Relationship of the power spectral density and limiting spectral distribution of large population dimensional covariance matrices of ARMA(p,q) is established. The equation about Stieltjes transform of large‐dimensional sample covariance matrices is also derived. As applications, the classical M‐P law, VAR(1) and VMA(1) can be regarded as special examples.
Annals of Applied Probability | 2015
Chen Wang; Baisuo Jin; Zhidong Bai; K. Krishnan Nair; Matthew Harding
The auto-cross covariance matrix is defined as \[\mathbf{M}_n=\frac{1} {2T}\sum_{j=1}^T\bigl(\mathbf{e}_j\mathbf{e}_{j+\tau}^*+\mathbf{e}_{j+ \tau}\mathbf{e}_j^*\bigr),\] where
Statistics and Computing | 2013
Baisuo Jin; Xiaoping Shi; Yuehua Wu
\mathbf{e}_j
Journal of Geophysical Research | 2014
Baisuo Jin; Yuehua Wu; Baiqi Miao; Xiaolan L. Wang; Pengfei Guo
s are
Journal of Applied Statistics | 2011
Baisuo Jin; Mong-Na Lo Huang; Baiqi Miao
n
Journal of Applied Statistics | 2018
M. Xu; Y. Wu; Baisuo Jin
-dimensional vectors of independent standard complex components with a common mean 0, variance
Entropy | 2015
Yuehua Wu; Baisuo Jin; Elton Chan
\sigma^2
Journal of Systems Science & Complexity | 2013
Baiqi Miao; Qian Tong; Yuehua Wu; Baisuo Jin
, and uniformly bounded