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Approximate Maximum-likelihood Identification of Linear Systems from Quantized Measurements ?

机译:从量化测量的线性系统的近似最大似然识别

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We analyze likelihood-based identification of systems that are linear in the parameters from quantized output data; in particular, we propose a method to find approximate maximum-likelihood and maximum-a-posteriori solutions. The method consists of appropriate least-squares projections of the middle point of the active quantization intervals. We show that this approximation maximizes a variational approximation of the likelihood and we provide an upper bound for the approximation error. In a simulation study, we compare the proposed method with the true maximum-likelihood estimate of a finite impulse response model.
机译:我们分析了从量化输出数据的参数中线性的系统的基于似然的识别;特别是,我们提出了一种方法来查找近似最大可能性和最大-A-Bouthiori解决方案。该方法包括有源量化间隔的中间点的适当最小二乘投影。我们表明该近似最大化了可能性的变化近似,并且我们为近似误差提供了一个上限。在模拟研究中,我们将提出的方法与有限脉冲响应模型的真正最大似然估计进行比较。

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