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

Consider a normal vector , consisting of two sub-vectors and with dimensions and respectively. With independent observations of at hand, we study the correlation between and , from the perspective of the Canonical Correlation Analysis, under the high-dimensional setting: both and are proportional to the sample size . In this paper, we focus on the case that is of finite rank , i.e. there are nonzero canonical correlation coefficients, whose squares are denoted by . Under the additional assumptions and , we study the sample counterparts of , i.e. the largest k eigenvalues of the sample canonical correlation matrix , namely . We show that there exists a threshold , such that for each , when , converges almost surely to the right edge of the limiting spectral distribution of the sample canonical correlation matrix, denoted by . When , possesses an almost sure limit in , from which we can recover in turn, thus provide an estimate of the latter in the high-dimensional scenario.
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