We analyze a recently proposed dynamic programming algorithm (REDP) for maximum likelihood (ML) parameter estimation of superimposed signals in noise. We show that it degrades gracefully with deviations from the key assumption of a Limited interaction signal model (LISMO), providing exact estimates when the LISMO assumption holds exactly. In particular, we show that the deviations of the REDP estimates from the exact ML are continuous in the deviation of the signal model from the LISMO assumption. These deviations of the REDP estimates From the MLE are further quantified by a comparison to an ML algorithm with an exhaustive multidimensional search on a lattice in parameter space. We derive an explicit expression for the lattice spacing for ...
In this paper, we consider the problem of robust M-estimation of parameters of nonlinear signal proc...
International audienceWe discuss an approach to signal recovery in Generalized Linear Models (GLM) i...
A very simple example of an algorithmic problem solvable by dynamic programming is to maximize, over...
The problem of parametric estimation of signals composed of a weighted sum of functions drawn from a...
This paper studies the classical problem of detecting the locations of signal occurrences in a one-d...
The free energy principle from neuroscience has recently gained traction as one of the most prominen...
In Chapter 2, we consider a limited-memory multiple shooting method for weakly constrained variation...
This paper considers parameter estimation of superimposed exponential signals in multiplicative and ...
We address the problem of parameter estimation of superimposed chirp signals in noise. The approach ...
We address the problem of parameter estimation of superimposed chirp signals in noise. The approach ...
We consider the asymptotic consistency of maximum likelihood parameter estimation for dynamical syst...
A dynamic programming algorithm and a suboptimal but computationally efficient method for estimation...
Abstract—Graphical representations of codes facilitate the design of computationally efficient decod...
... systems, Maximum-Likelihood (ML) decoding is equivalent to finding the closest lattice point in ...
As an extension to the conventional EM algorithm, the tree-structured EM (TSEM) algorithm is propose...
In this paper, we consider the problem of robust M-estimation of parameters of nonlinear signal proc...
International audienceWe discuss an approach to signal recovery in Generalized Linear Models (GLM) i...
A very simple example of an algorithmic problem solvable by dynamic programming is to maximize, over...
The problem of parametric estimation of signals composed of a weighted sum of functions drawn from a...
This paper studies the classical problem of detecting the locations of signal occurrences in a one-d...
The free energy principle from neuroscience has recently gained traction as one of the most prominen...
In Chapter 2, we consider a limited-memory multiple shooting method for weakly constrained variation...
This paper considers parameter estimation of superimposed exponential signals in multiplicative and ...
We address the problem of parameter estimation of superimposed chirp signals in noise. The approach ...
We address the problem of parameter estimation of superimposed chirp signals in noise. The approach ...
We consider the asymptotic consistency of maximum likelihood parameter estimation for dynamical syst...
A dynamic programming algorithm and a suboptimal but computationally efficient method for estimation...
Abstract—Graphical representations of codes facilitate the design of computationally efficient decod...
... systems, Maximum-Likelihood (ML) decoding is equivalent to finding the closest lattice point in ...
As an extension to the conventional EM algorithm, the tree-structured EM (TSEM) algorithm is propose...
In this paper, we consider the problem of robust M-estimation of parameters of nonlinear signal proc...
International audienceWe discuss an approach to signal recovery in Generalized Linear Models (GLM) i...
A very simple example of an algorithmic problem solvable by dynamic programming is to maximize, over...