What Do Kernel Density Estimators Optimize?

Q3 Mathematics
R. Koenker, I. Mizera, Jungmo Yoon
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引用次数: 0

Abstract

Some linkages between kernel and penalty methods of density estimation are explored. It is recalled that classical Gaussian kernel density estimation can be viewed as the solution of the heat equation with initial condition given by data. We then observe that there is a direct relationship between the kernel method and a particular penalty method of density estimation. For this penalty method, solutions can be characterized as a weighted average of Gaussian kernel density estimates, the average taken with respect to the bandwidth parameter. A Laplace transform argument shows that this weighted average of Gaussian kernel estimates is equivalent to a fixed bandwidth kernel estimate using a Laplace kernel. Extensions to higher order kernels are considered and some connections to penalized likelihood density estimators are made in the concluding sections.
核密度估计器优化了什么?
探讨了密度估计的核方法和惩罚方法之间的联系。回顾经典高斯核密度估计可以看作是数据给出初始条件的热方程的解。然后,我们观察到核方法与密度估计的特定惩罚方法之间存在直接关系。对于这种惩罚方法,解可以表征为高斯核密度估计的加权平均值,即关于带宽参数的平均值。一个拉普拉斯变换论证表明高斯核估计的加权平均等价于使用拉普拉斯核的固定带宽核估计。讨论了对高阶核的扩展,并在结论部分给出了与惩罚似然密度估计的一些联系。
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来源期刊
Journal of Econometric Methods
Journal of Econometric Methods Economics, Econometrics and Finance-Economics and Econometrics
CiteScore
2.20
自引率
0.00%
发文量
7
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