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A NEW LOWER BOUND ON THE MEAN-SQUARE ERROR OF BIASED ESTIMATORS

机译:偏置估计均方误差的新下限

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In this paper, the class of lower bounds on the MSE of unbiased estimators, derived in our previous work, is extended to the case of biased estimation. The proposed class is derived by projecting the estimation error on a Hilbert subspace of L{sub}2, which contains linear transformations of elements in the domain of an integral transform of the likelihood-ratio function. It is shown that some well known bounds can be derived from the proposed class by modifying the kernel of the integral transform. By decomposing the projection of the estimation error into bias-independent and bias-dependent components, the proposed class is minimized with respect to the bias function subject to a bounded L{sub}2-norm of the bias-dependent component. A new computationally manageable bound is derived from the proposed class using the kernel of the weighted Fourier transform. The bound is applied for exploring the bias-variance tradeoff in the problem of direction-of-arrival estimation.
机译:在本文中,在我们以前的工作中获得的非偏见估计器的MSE上的下限延伸到偏见估计的情况。通过投影L {sub} 2的HILBERT子空间上的估计误差来导出所提出的类,其中包含概念比率函数的积分变换域中元素的线性变换。结果表明,通过修改积分变换的内核,可以从所提出的类导出一些众所周知的范围。通过将估计误差的投影分解成偏置独立于偏置和偏置依赖性组件,所提出的类别将偏置函数最小化,该函数受到偏置组件的有界L {子} 2-norm的偏置函数。使用加权傅里叶变换的内核从所提出的类派生新的计算可管理的绑定。界限适用于探索到达方向估计问题中的偏差差异。

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