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An algorithm for the minimization of mixed l/sub 1/ and l/sub 2/ norms with application to Bayesian estimation

机译:一种最小化混合l / sub 1 /和l / sub 2 /范数的算法及其在贝叶斯估计中的应用

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摘要

The regularizing functional approach is widely used in many estimation problems. In practice, the solution is defined as one minimum point of a suitable functional, the main part of which accounts for the underlying physical model, whereas the regularizing part represents some prior information about the unknowns. In the Bayesian interpretation, one has a maximum a posteriori (MAP) estimator in which the main and regularizing parts are represented, respectively, by likelihood and prior distributions. When either the prior or likelihood is a Laplace distribution and the other is a Gaussian distribution, one is led to consider functionals that include both absolute and square norms. The authors present a characterization of the minimum points of such functionals, together with a descent-type algorithm for numerical computations. The results of Monte-Carlo simulations are also reported.
机译:正则化函数方法广泛用于许多估计问题。在实践中,解决方案定义为适当功能的一个最小点,其主要部分用于说明基础物理模型,而正则化部分表示有关未知数的一些先验信息。在贝叶斯解释中,具有最大后验(MAP)估计量,其中主要部分和正则化部分分别由似然和先验分布表示。当先验或似然性是拉普拉斯分布,而另一个是高斯分布时,则一个被认为要考虑同时包含绝对和平方范数的泛函。作者介绍了此类函数的最小点的特征,以及用于数值计算的下降型算法。还报告了蒙特卡洛模拟的结果。

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