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使用正交前向回归的可调核概率密度估计

Probability density estimation with tunable kernels using orthogonal forward regression.

作者信息

Chen Sheng, Hong Xia, Harris Chris J

机构信息

School of Electronics and Computer Science, University of Southampton, Southampton, UK.

出版信息

IEEE Trans Syst Man Cybern B Cybern. 2010 Aug;40(4):1101-14. doi: 10.1109/TSMCB.2009.2034732. Epub 2009 Dec 15.

DOI:10.1109/TSMCB.2009.2034732
PMID:20007052
Abstract

A generalized or tunable-kernel model is proposed for probability density function estimation based on an orthogonal forward regression procedure. Each stage of the density estimation process determines a tunable kernel, namely, its center vector and diagonal covariance matrix, by minimizing a leave-one-out test criterion. The kernel mixing weights of the constructed sparse density estimate are finally updated using the multiplicative nonnegative quadratic programming algorithm to ensure the nonnegative and unity constraints, and this weight-updating process additionally has the desired ability to further reduce the model size. The proposed tunable-kernel model has advantages, in terms of model generalization capability and model sparsity, over the standard fixed-kernel model that restricts kernel centers to the training data points and employs a single common kernel variance for every kernel. On the other hand, it does not optimize all the model parameters together and thus avoids the problems of high-dimensional ill-conditioned nonlinear optimization associated with the conventional finite mixture model. Several examples are included to demonstrate the ability of the proposed novel tunable-kernel model to effectively construct a very compact density estimate accurately.

摘要

基于正交前向回归过程,提出了一种用于概率密度函数估计的广义或可调核模型。密度估计过程的每个阶段通过最小化留一法检验准则来确定一个可调核,即其中心向量和对角协方差矩阵。最后,使用乘法非负二次规划算法更新构建的稀疏密度估计的核混合权重,以确保非负和归一化约束,并且这个权重更新过程还具有进一步减小模型规模的理想能力。与标准固定核模型相比,所提出的可调核模型在模型泛化能力和模型稀疏性方面具有优势,标准固定核模型将核中心限制在训练数据点上,并且每个核使用单个公共核方差。另一方面,它不会一起优化所有模型参数,从而避免了与传统有限混合模型相关的高维病态非线性优化问题。文中包含了几个例子来证明所提出的新型可调核模型能够有效地准确构建非常紧凑的密度估计。

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