核均值嵌入的极大极小估计

I. Tolstikhin, Bharath K. Sriperumbudur, Krikamol Muandet
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引用次数: 71

摘要

在本文中,我们研究了Bochner积分$$\mu_k(P):=\int_{\mathcal{X}} k(\cdot,x)\,dP(x),$$的极大极小估计,也称为核均值嵌入,基于从$P$中抽取的随机样本i.i.d,其中$k:\mathcal{X}\times\mathcal{X}\rightarrow\mathbb{R}$是一个正定核。文献中研究了$\mu_k(P)$的各种估计量(包括经验估计量)$\hat{\theta}_n$,它们都满足$\bigl\| \hat{\theta}_n-\mu_k(P)\bigr\|_{\mathcal{H}_k}=O_P(n^{-1/2})$,其中$\mathcal{H}_k$是$k$诱导的再现核希尔伯特空间。本文的主要贡献在于证明了$n^{-1/2}$的上述速率在$\|\cdot\|_{\mathcal{H}_k}$和$\|\cdot\|_{L^2(\mathbb{R}^d)}$ -范数上是极小极大的,在离散测度类和具有无穷可微密度的测度类上,$k$是$\mathbb{R}^d$上的连续平移不变核。这个结果的有趣之处在于,极大极小率与核的平滑度和$P$的密度无关(如果存在的话)。这一结果在统计应用中具有实际意义,因为均值嵌入通过其与能量距离(和距离协方差)的关系,已广泛应用于非参数假设检验、密度估计、因果推理和特征选择。
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Minimax Estimation of Kernel Mean Embeddings
In this paper, we study the minimax estimation of the Bochner integral $$\mu_k(P):=\int_{\mathcal{X}} k(\cdot,x)\,dP(x),$$ also called as the kernel mean embedding, based on random samples drawn i.i.d.~from $P$, where $k:\mathcal{X}\times\mathcal{X}\rightarrow\mathbb{R}$ is a positive definite kernel. Various estimators (including the empirical estimator), $\hat{\theta}_n$ of $\mu_k(P)$ are studied in the literature wherein all of them satisfy $\bigl\| \hat{\theta}_n-\mu_k(P)\bigr\|_{\mathcal{H}_k}=O_P(n^{-1/2})$ with $\mathcal{H}_k$ being the reproducing kernel Hilbert space induced by $k$. The main contribution of the paper is in showing that the above mentioned rate of $n^{-1/2}$ is minimax in $\|\cdot\|_{\mathcal{H}_k}$ and $\|\cdot\|_{L^2(\mathbb{R}^d)}$-norms over the class of discrete measures and the class of measures that has an infinitely differentiable density, with $k$ being a continuous translation-invariant kernel on $\mathbb{R}^d$. The interesting aspect of this result is that the minimax rate is independent of the smoothness of the kernel and the density of $P$ (if it exists). This result has practical consequences in statistical applications as the mean embedding has been widely employed in non-parametric hypothesis testing, density estimation, causal inference and feature selection, through its relation to energy distance (and distance covariance).
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