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Probability density estimation by linear combinations of Gaussian kernels- generalizations and algorithmic evaluation

机译:通过高斯核线性组合的概率密度估计-概化和算法评估

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This paper examines parametric density estimation using a variable weighted sum of Gaussian kernels, where the weights may take positive and negative values. Various statistical properties of the estimator are studied as well as its extensions to multidimensional probability density estimation. Identification of the estimator parameters are computed by a modified EM algorithm and the number of kernels are estimated by information theoretic approach, using the Akiake Information Criterion (AIC). This paper provides empirical evaluation of the estimator with respect to window-based estimators and the classical linear combinations of Gaussian estimator that uses only positive weights, showing its robustness (in terms of accuracy and speed) for various applications in image and signal analysis and machine learning.
机译:本文研究了使用可变加权高斯核和的参数密度估计,其中权重可以取正值和负值。研究了估计量的各种统计属性,以及它对多维概率密度估计的扩展。估计器参数的识别通过改进的EM算法进行计算,内核的数量通过信息理论方法使用Akiake信息准则(AIC)进行估计。本文针对基于窗口的估计器和仅使用正权重的高斯估计器的经典线性组合,对估计器进行了实证评估,显示了其在图像和信号分析以及机器中的各种应用的鲁棒性(在准确性和速度方面)学习。

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