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. QC20190418</p
In this paper, we analyse the effect of the quantization of signals used for system identification a...
This paper addresses system identification of FIR models with quantized measurements in a worst-case...
Signal amplitude estimation and detection from unlabeled quantized binary samples are studied, assum...
We analyze likelihood-based identification of systems that are linear in the parameters from quantiz...
We analyze likelihood-based identification of systems that are linear in the parameters from quantiz...
We analyze likelihood-based identification of systems that are linear in the parameters from quantiz...
\u3cp\u3eWe analyze likelihood-based identification of systems that are linear in the parameters fro...
In this article, we consider the identification of linear models from quantized output data. We deve...
In this article, we consider the identification of linear models from quantized output data. We deve...
In this paper we introduce a novel method for linear system identification with quantized output dat...
Identification of dynamical systems from low resolution quantized observations presents several chal...
In this paper we consider the problem of identifying a fixed-order FIR approximation of linear syste...
In this paper we introduce a novel method for linear system identification with quantized output dat...
Bibliography: p. 82-83.Research supported by Grant ERDA-E(49-18)-2087.by Nils R. Sandell, Jr. and Kh...
In this paper, we consider a number of technical problems associated with identification of linear s...
In this paper, we analyse the effect of the quantization of signals used for system identification a...
This paper addresses system identification of FIR models with quantized measurements in a worst-case...
Signal amplitude estimation and detection from unlabeled quantized binary samples are studied, assum...
We analyze likelihood-based identification of systems that are linear in the parameters from quantiz...
We analyze likelihood-based identification of systems that are linear in the parameters from quantiz...
We analyze likelihood-based identification of systems that are linear in the parameters from quantiz...
\u3cp\u3eWe analyze likelihood-based identification of systems that are linear in the parameters fro...
In this article, we consider the identification of linear models from quantized output data. We deve...
In this article, we consider the identification of linear models from quantized output data. We deve...
In this paper we introduce a novel method for linear system identification with quantized output dat...
Identification of dynamical systems from low resolution quantized observations presents several chal...
In this paper we consider the problem of identifying a fixed-order FIR approximation of linear syste...
In this paper we introduce a novel method for linear system identification with quantized output dat...
Bibliography: p. 82-83.Research supported by Grant ERDA-E(49-18)-2087.by Nils R. Sandell, Jr. and Kh...
In this paper, we consider a number of technical problems associated with identification of linear s...
In this paper, we analyse the effect of the quantization of signals used for system identification a...
This paper addresses system identification of FIR models with quantized measurements in a worst-case...
Signal amplitude estimation and detection from unlabeled quantized binary samples are studied, assum...