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Hard-constrained versus soft-constrained parameter estimation

机译:硬约束与软约束参数估计

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The paper aims at contrasting two different ways of incorporating a priori information in parameter estimation, i.e., hard-constrained and soft-constrained estimation. Hard-constrained estimation can be interpreted, in the Bayesian framework, as maximum a posteriori probability (MAP) estimation with uniform prior distribution over the constraining set, and amounts to a constrained least-squares (LS) optimization. Novel analytical results on the statistics of the hard-constrained estimator are presented for a linear regression model subject to lower and upper bounds on a single parameter. This analysis allows to quantify the mean squared error (MSE) reduction implied by constraints and to see how this depends on the size of the constraining set compared with the confidence regions of the unconstrained estimator. Contrastingly, soft-constrained estimation can be regarded as MAP estimation with Gaussian prior distribution and amounts to a less computationally demanding unconstrained LS optimization with a cost suitably modified by the mean and covariance of the Gaussian distribution. Results on the design of the prior covariance of the soft-constrained estimator for optimal MSE performance are also given. Finally, a practical case-study concerning a line fitting estimation problem is presented in order to validate the theoretical results derived in the paper as well as to compare the performance of the hard-constrained and soft-constrained approaches under different settings
机译:本文旨在对比在参数估计中合并先验信息的两种不同方法,即硬约束和软约束估计。硬约束估计可以在贝叶斯框架中解释为在约束集上具有均匀先验分布的最大后验概率(MAP)估计,并且等于约束最小二乘(LS)优化。针对在单个参数上下限的线性回归模型,给出了关于硬约束估计量统计量的新颖分析结果。该分析允许量化约束隐含的均方误差(MSE)降低,并查看与无约束估计量的置信区域相比,这如何取决于约束集的大小。相比之下,软约束估计可以被视为具有高斯先验分布的MAP估计,其计算量较少,无约束LS优化的成本由高斯分布的均值和协方差适当地修改。还给出了用于优化MSE性能的软约束估计器的先验协方差设计结果。最后,提出了关于线拟合估计问题的实际案例研究,以验证本文得出的理论结果,并比较不同设置下的硬约束和软约束方法的性能

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