Learning the model parameters of a multi-object dynamical system from partial and perturbed observations is a challenging task. Despite recent numerical advancements in learning these parameters, theoretical guarantees are extremely scarce. In this article, we study the identifiability of these parameters and the consistency of the corresponding maximum likelihood estimate (MLE) under assumptions on the different components of the underlying multi-object system. In order to understand the impact of the various sources of observation noise on the ability to learn the model parameters, we study the asymptotic variance of the MLE through the associated Fisher information matrix. For example, we show that specific aspects of the multi-target tr...
Standard, exact techniques based on likelihood maximization are available for learning Auto-Regressi...
A general characterization of multi-input movement detection models is given in terms of the Volterr...
This paper examines the identification of multi-input systems. Motivated by an experiment design pro...
Learning the model parameters of a multi-object dynamical system from partial and perturbed observat...
Learning the model parameters of a multiobject dynamical system from partial and perturbed observati...
Target-tracking problems involve the online estimation of the state vector of an object under survei...
A novel solution to the smoothing problem for multi-object dynamical systems is proposed and evaluat...
The problem of system identification is to learn the system dynamics from data. While classical syst...
The aim of this thesis is to investigate nonlinear dynamical systems that exist in various fields su...
The problem of determining dynamical models and trajectories that describe observed time-series data...
This paper examines the issue of weak identification in maximum likelihood, motivated by problems wi...
Abstract. This paper presents new results for the identification of predictive models for unknown dy...
International audienceModeling dynamical systems combining prior physical knowledge and machinelearn...
We propose a new probabilistic framework for nonparametric identification and estimation of dynamic ...
Parameter estimation is a vital component of model development. Making use of data, one aims to dete...
Standard, exact techniques based on likelihood maximization are available for learning Auto-Regressi...
A general characterization of multi-input movement detection models is given in terms of the Volterr...
This paper examines the identification of multi-input systems. Motivated by an experiment design pro...
Learning the model parameters of a multi-object dynamical system from partial and perturbed observat...
Learning the model parameters of a multiobject dynamical system from partial and perturbed observati...
Target-tracking problems involve the online estimation of the state vector of an object under survei...
A novel solution to the smoothing problem for multi-object dynamical systems is proposed and evaluat...
The problem of system identification is to learn the system dynamics from data. While classical syst...
The aim of this thesis is to investigate nonlinear dynamical systems that exist in various fields su...
The problem of determining dynamical models and trajectories that describe observed time-series data...
This paper examines the issue of weak identification in maximum likelihood, motivated by problems wi...
Abstract. This paper presents new results for the identification of predictive models for unknown dy...
International audienceModeling dynamical systems combining prior physical knowledge and machinelearn...
We propose a new probabilistic framework for nonparametric identification and estimation of dynamic ...
Parameter estimation is a vital component of model development. Making use of data, one aims to dete...
Standard, exact techniques based on likelihood maximization are available for learning Auto-Regressi...
A general characterization of multi-input movement detection models is given in terms of the Volterr...
This paper examines the identification of multi-input systems. Motivated by an experiment design pro...