A Unifying Framework for Global Gaussianization: Asymptotic Equivalence of Locally Stationary Processes and Bivariate White Noise
We consider a general class of statistical experiments, in which an $n$-dimensional centered Gaussian random variable is observed and its covariance matrix is the parameter of interest. The covariance matrix is assumed to be well-approximable in a linear space of lower dimension $K_n$ with eigenvalu...
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Zusammenfassung: | We consider a general class of statistical experiments, in which an
$n$-dimensional centered Gaussian random variable is observed and its
covariance matrix is the parameter of interest. The covariance matrix is
assumed to be well-approximable in a linear space of lower dimension $K_n$ with
eigenvalues uniformly bounded away from zero and infinity. We prove asymptotic
equivalence of this experiment and a class of $K_n$-dimensional Gaussian models
with informative expectation in Le Cam's sense when $n$ tends to infinity and
$K_n$ is allowed to increase moderately in $n$ at a polynomial rate. For this
purpose we derive a new localization technique for non-i.i.d. data and a novel
high-dimensional Central Limit Law in total variation distance. These results
are key ingredients to show asymptotic equivalence between the experiments of
locally stationary Gaussian time series and a bivariate Wiener process with the
log spectral density as its drift. Therein a novel class of matrices is
introduced which generalizes circulant Toeplitz matrices traditionally used for
strictly stationary time series. |
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DOI: | 10.48550/arxiv.2410.05751 |