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首页> 外文期刊>SIAM Journal on Scientific Computing >Efficient nonparametric density estimation on the sphere with applications in fluid mechanics
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Efficient nonparametric density estimation on the sphere with applications in fluid mechanics

机译:球体上有效的非参数密度估计及其在流体力学中的应用

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摘要

The application of nonparametric probability density function estimation for the purpose of data analysis is well established. More recently, such methods have been applied to fluid flow calculations since the density of the fluid plays a crucial role in determining the ow. Furthermore, when the calculations involve directional or axial data, the domain of interest falls on the surface of the sphere. Accurate and fast estimation of probability density functions is crucial for these calculations since the density estimation is performed at each iteration during the computation. In particular the values fn(X-1), f(n)(X-2),..., f(n)(X-n) of the density estimate at the sampled points X-i are needed to evolve the system. Usual nonparametric estimators make use of kernel functions to construct f(n). We propose a special sequence of weight functions for nonparametric density estimation that is especially suitable for such applications. The resulting method has a computational advantage over kernel methods in certain situations and also parallelizes easily. Conditions for convergence turn out to be similar to those required for kernel-based methods. We also discuss experiments on different distributions and compare the computational efficiency of our method with kernel based estimators. [References: 29]
机译:很好地建立了非参数概率密度函数估计在数据分析中的应用。最近,由于流体的密度在确定流量方面起着至关重要的作用,因此此类方法已应用于流体流量计算。此外,当计算涉及方向或轴向数据时,感兴趣的区域将落在球体的表面上。对于这些计算,准确而快速的概率密度函数估算至关重要,因为密度估算是在计算过程中的每次迭代中执行的。特别地,需要采样点X-i处的密度估计值fn(X-1),f(n)(X-2),...,f(n)(X-n)来演化系统。通常的非参数估计器利用核函数构造f(n)。我们为非参数密度估计提出了一个特殊的加权函数序列,该序列特别适合于此类应用。在某些情况下,所得方法比内核方法具有计算优势,并且也易于并行化。收敛的条件与基于内核的方法所需的条件相似。我们还将讨论不同分布的实验,并将我们的方法与基于核的估计器的计算效率进行比较。 [参考:29]

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