Kernel entropy estimation for linear processes
Abstract: Let ${X_n: n\in \mathbb{N}}$ be a linear process with bounded probability density function $f(x)$. We study the estimation of the quadratic functional $\int_{\mathbb{R}} f2(x)\, dx$. With a Fourier transform on the kernel function and the projection method, it is shown that, under certain mild conditions, the estimator [ \frac{2}{n(n-1)h_n} \sum_{1\le i<j\le n}K\left(\frac{X_i-X_j}{h_n}\right) ] has similar asymptotical properties as the i.i.d. case studied in Gin\'{e} and Nickl (2008) if the linear process ${X_n: n\in \mathbb{N}}$ has the defined short range dependence. We also provide an application to $L2_2$ divergence and the extension to multivariate linear processes. The simulation study for linear processes with Gaussian and $\alpha$-stable innovations confirms our theoretical results. As an illustration, we estimate the $L2_2$ divergences among the density functions of average annual river flows for four rivers and obtain promising results.
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