We consider estimation under model misspecification where there is a model mismatch between the underlying system, which generates the data, and the model used during estimation. We propose a model misspecification framework which enables a joint treatment of the model misspecification types of having fake features as well as incorrect covariance assumptions on the unknowns and the noise. We present a decomposition of the output error into components that relate to different subsets of the model parameters corresponding to underlying, fake and missing features. Here, fake features are features which are included in the model but are not present in the underlying system. Under this framework, we characterize the estimation performance and re...
This paper investigates the use of a pseudo-likelihood approach for inference in regression models w...
This paper investigates the use of a pseudo-likelihood approach for inference in regression models w...
This thesis discusses three different topics: model error modeling, bootstrap, and model reduction. ...
We consider estimation under model misspecification where there is a model mismatch between the unde...
We consider estimation under model misspecification where there is a model mismatch between the unde...
Inference problems with incomplete observations often aim at estimating population properties of uno...
Misspecifications (i.e. errors on the parameters) of state space models lead to incorrect inference ...
Inference problems with incomplete observations often aim at estimating population prop-erties of un...
Misspecifications (i.e. errors on the parameters) of state space models lead to incorrect inference ...
We propose a framework for estimation and inference when the model may be misspecified. We rely on a...
Inferring information from a set of acquired data is the main objective of any signal processing (SP...
We propose a framework for estimation and inference when the model may be misspecified. We rely on a...
We propose a framework for estimation and inference when the model may be misspecified. We rely on a...
Inferring information from a set of acquired data is the main objective of any signal processing (SP...
This paper investigates the use of a pseudo-likelihood approach for inference in regression models w...
This paper investigates the use of a pseudo-likelihood approach for inference in regression models w...
This paper investigates the use of a pseudo-likelihood approach for inference in regression models w...
This thesis discusses three different topics: model error modeling, bootstrap, and model reduction. ...
We consider estimation under model misspecification where there is a model mismatch between the unde...
We consider estimation under model misspecification where there is a model mismatch between the unde...
Inference problems with incomplete observations often aim at estimating population properties of uno...
Misspecifications (i.e. errors on the parameters) of state space models lead to incorrect inference ...
Inference problems with incomplete observations often aim at estimating population prop-erties of un...
Misspecifications (i.e. errors on the parameters) of state space models lead to incorrect inference ...
We propose a framework for estimation and inference when the model may be misspecified. We rely on a...
Inferring information from a set of acquired data is the main objective of any signal processing (SP...
We propose a framework for estimation and inference when the model may be misspecified. We rely on a...
We propose a framework for estimation and inference when the model may be misspecified. We rely on a...
Inferring information from a set of acquired data is the main objective of any signal processing (SP...
This paper investigates the use of a pseudo-likelihood approach for inference in regression models w...
This paper investigates the use of a pseudo-likelihood approach for inference in regression models w...
This paper investigates the use of a pseudo-likelihood approach for inference in regression models w...
This thesis discusses three different topics: model error modeling, bootstrap, and model reduction. ...