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arxiv: 1410.8372 · v1 · pith:SHSHAINLnew · submitted 2014-10-30 · 📊 stat.ML

On Estimating L₂² Divergence

classification 📊 stat.ML
keywords estimatorconvergencedivergenceratesmoothasymptoticasymptoticallyberry-ess
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We give a comprehensive theoretical characterization of a nonparametric estimator for the $L_2^2$ divergence between two continuous distributions. We first bound the rate of convergence of our estimator, showing that it is $\sqrt{n}$-consistent provided the densities are sufficiently smooth. In this smooth regime, we then show that our estimator is asymptotically normal, construct asymptotic confidence intervals, and establish a Berry-Ess\'{e}en style inequality characterizing the rate of convergence to normality. We also show that this estimator is minimax optimal.

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