A connection between the general linear model (GLM) with frequentist statistical testing and machine learning (MLE) inference is derived and illustrated. Initially, the estimation of GLM parameters is expressed as a Linear Regression Model (LRM) of an indicator matrix; that is, in terms of the inverse problem of regressing the observations. Both approaches, i.e. GLM and LRM, apply to different domains, the observation and the label domains, and are linked by a normalization value in the least-squares solution. Subsequently, we derive a more refined predictive statistical test: the linear Support Vector Machine (SVM), that maximizes the class margin of separation within a permutation analysis. This MLE-based inference employs a residual scor...
The glm-ie toolbox contains functionality for estimation and inference in generalised linear models ...
This thesis presents multiple fundamental mathematical contributions to Generalized Linear Models (G...
This thesis presents multiple fundamental mathematical contributions to Generalized Linear Models (G...
A connection between the general linear model (GLM) with frequentist statistical testing and machin...
International audienceConventional approaches to modeling classification image data can be described...
International audienceConventional approaches to modeling classification image data can be described...
International audienceConventional approaches to modeling classification image data can be described...
This chapter aims to introduce the common methods and practices of statistical machine learning tech...
How can we select the best performing data-driven model? How can we rigorously estimate its generali...
The linear coefficient in a partially linear model with confounding variables can be estimated using...
How can we select the best performing data-driven model? How can we rigorously estimate its generali...
How can we select the best performing data-driven model? How can we rigorously estimate its generali...
How can we select the best performing data-driven model? How can we rigorously estimate its generali...
There remains an open question about the usefulness and the interpretation of machine learning (ML) ...
There remains an open question about the usefulness and the interpretation of machine learning (ML) ...
The glm-ie toolbox contains functionality for estimation and inference in generalised linear models ...
This thesis presents multiple fundamental mathematical contributions to Generalized Linear Models (G...
This thesis presents multiple fundamental mathematical contributions to Generalized Linear Models (G...
A connection between the general linear model (GLM) with frequentist statistical testing and machin...
International audienceConventional approaches to modeling classification image data can be described...
International audienceConventional approaches to modeling classification image data can be described...
International audienceConventional approaches to modeling classification image data can be described...
This chapter aims to introduce the common methods and practices of statistical machine learning tech...
How can we select the best performing data-driven model? How can we rigorously estimate its generali...
The linear coefficient in a partially linear model with confounding variables can be estimated using...
How can we select the best performing data-driven model? How can we rigorously estimate its generali...
How can we select the best performing data-driven model? How can we rigorously estimate its generali...
How can we select the best performing data-driven model? How can we rigorously estimate its generali...
There remains an open question about the usefulness and the interpretation of machine learning (ML) ...
There remains an open question about the usefulness and the interpretation of machine learning (ML) ...
The glm-ie toolbox contains functionality for estimation and inference in generalised linear models ...
This thesis presents multiple fundamental mathematical contributions to Generalized Linear Models (G...
This thesis presents multiple fundamental mathematical contributions to Generalized Linear Models (G...