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BOUNDED-ERROR PARAMETER ESTIMATION - NOISE MODELS AND RECURSIVE ALGORITHMS

机译:有界误差参数估计-噪声模型和递归算法

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This paper deals with some issues involving a parameter estimation approach that yields estimates consistent with the data and the given a priori information. The first part of the paper deals with the relationships between various noise models and the 'size' of the resulting membership set, the set of parameter estimates consistent with the data and the a priori information. When there is some flexibility about the choice of the noise model, this analysis can be helpful for noise model selection so that the resulting membership set yields a better estimate of the unknown parameter. The second part of the paper presents algorithms for various commonly encountered noise models that have the following properties: (a) they are recursive and easy to implement; and (b) after a finite 'learning period', the estimates provided by these algorithms are guaranteed to be in (or very 'close' to) the membership set. In general, the interpolatory algorithms, that produce an estimate in the membership set, do not possess nice statistical and worst-case properties similar to those of classical approaches such as least mean squares (LMS) and least squares (LS) algorithms. In the third part of the paper, we propose an algorithm that is optimal in a certain worst-case sense but gives an estimate that is in (or is 'close' to) the membership set. Copyright (C) 1996 Elsevier Science Ltd. [References: 22]
机译:本文涉及一些涉及参数估计方法的问题,该方法得出的估计与数据和给定的先验信息一致。本文的第一部分处理各种噪声模型与所得成员集的“大小”之间的关系,参数估计集与数据和先验信息一致。如果噪声模型的选择具有一定的灵活性,则此分析可能有助于噪声模型的选择,从而使所得的隶属集可更好地估计未知参数。本文的第二部分介绍了具有以下特性的各种常见噪声模型的算法:(a)它们是递归的,易于实现; (b)在有限的“学习期”之后,这些算法提供的估计值应保证在隶属集中(或非常接近)。通常,在隶属集中产生估计的内插算法不具有类似于经典方法(如最小均方(LMS)和最小二乘(LS)算法)的统计和最差情况属性。在本文的第三部分中,我们提出了一种算法,该算法在某种最坏的情况下是最佳的,但给出的估计在隶属集内(或“接近于”隶属集)。版权所有(C)1996 Elsevier Science Ltd. [引用:22]

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