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Canonical correlation coefficients of high-dimensional normal vectors: finite rank case

Abstract

Consider a normal vector z=(x,y)\mathbf{z}=(\mathbf{x}',\mathbf{y}')', consisting of two sub-vectors x\mathbf{x} and y\mathbf{y} with dimensions pp and qq respectively. With nn independent observations of z\mathbf{z} at hand, we study the correlation between x\mathbf{x} and y\mathbf{y}, from the perspective of the Canonical Correlation Analysis, under the high-dimensional setting: both pp and qq are proportional to the sample size nn. In this paper, we focus on the case that Σxy\Sigma_{\mathbf{x}\mathbf{y}} is of finite rank kk, i.e. there are kk nonzero canonical correlation coefficients, whose squares are denoted by r1rk>0r_1\geq\cdots\geq r_k>0. Under the additional assumptions (p+q)/ny(0,1)(p+q)/n\to y\in (0,1) and p/q↛1p/q\not\to 1, we study the sample counterparts of ri,i=1,,kr_i,i=1,\ldots,k, i.e. the largest k eigenvalues of the sample canonical correlation matrix Sxx1SxySyy1SyxS_{\mathbf{x}\mathbf{x}}^{-1}S_{\mathbf{x}\mathbf{y}}S_{\mathbf{y}\mathbf{y}}^{-1}S_{\mathbf{y}\mathbf{x}}, namely λ1λk\lambda_1\geq\cdots\geq \lambda_k. We show that there exists a threshold rc(0,1)r_c\in(0,1), such that for each i{1,,k}i\in\{1,\ldots,k\}, when rircr_i\leq r_c, λi\lambda_i converges almost surely to the right edge of the limiting spectral distribution of the sample canonical correlation matrix, denoted by drd_r. When ri>rcr_i>r_c, λi\lambda_i possesses an almost sure limit in (dr,1](d_r,1], from which we can recover rir_i in turn, thus provide an estimate of the latter in the high-dimensional scenario.

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