Let be a linear process with bounded probability density function . We study the estimation of the quadratic functional . 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 has the defined short range dependence. We also provide an application to divergence and the extension to multivariate linear processes. The simulation study for linear processes with Gaussian and -stable innovations confirms our theoretical results. As an illustration, we estimate the divergences among the density functions of average annual river flows for four rivers and obtain promising results.
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