System identification and machine learning are two similar concepts independently used in automatic and computer science community. System identification uses statistical methods to build mathematical models of dynamical systems from measured data. Machine learning algorithms build a mathematical model based on sample data, known as "training data" (clean or not), in order to make predictions or decisions without being explicitly programmed to do so. Except prediction accuracy, converging speed and stability are another two key factors to evaluate the training process, especially in the online learning scenario, and these properties have already been well studied in control theory. Therefore, this thesis will implement the interdisciplinary...
Differentiation algorithms are numerical methods for the derivative estimation of measured signals. ...
One substantial question, that is often argumentative in learning theory, is how to choose a `good' ...
Intra and inter-individual variability in decision making are very common observations both in the w...
System identification and machine learning are two similar concepts independently used in automatic ...
System identification and machine learning are two similar concepts independently used in automatic ...
Prognostics & Health Management (PHM) aims at extending the life cycle of an engineering asset, whil...
In the context of energy transition, wind power generation is developing rapidly. Meanwhile, in the ...
Dans cette thèse, montrons à travers trois problématiques indépendantes l'intérêt des méthodes d'exp...
Brain-computer interfaces (BCIs) may significantly improve tetraplegic patients' quality of life by ...
This thesis consists of three scientific publications that use machine learning methods to understan...
Dans certains champs d’apprentissage supervisé (e.g. diagnostic médical, vision artificielle), les m...
In this thesis, we show through three independent problems the interest of explainability methods fo...
This thesis develops and studies some principled methods for Deep Learning (DL) and deep Reinforceme...
Year after year advances in deep learning allow to solve a rapidly increasing range of challenging t...
Differentiation algorithms are numerical methods for the derivative estimation of measured signals. ...
One substantial question, that is often argumentative in learning theory, is how to choose a `good' ...
Intra and inter-individual variability in decision making are very common observations both in the w...
System identification and machine learning are two similar concepts independently used in automatic ...
System identification and machine learning are two similar concepts independently used in automatic ...
Prognostics & Health Management (PHM) aims at extending the life cycle of an engineering asset, whil...
In the context of energy transition, wind power generation is developing rapidly. Meanwhile, in the ...
Dans cette thèse, montrons à travers trois problématiques indépendantes l'intérêt des méthodes d'exp...
Brain-computer interfaces (BCIs) may significantly improve tetraplegic patients' quality of life by ...
This thesis consists of three scientific publications that use machine learning methods to understan...
Dans certains champs d’apprentissage supervisé (e.g. diagnostic médical, vision artificielle), les m...
In this thesis, we show through three independent problems the interest of explainability methods fo...
This thesis develops and studies some principled methods for Deep Learning (DL) and deep Reinforceme...
Year after year advances in deep learning allow to solve a rapidly increasing range of challenging t...
Differentiation algorithms are numerical methods for the derivative estimation of measured signals. ...
One substantial question, that is often argumentative in learning theory, is how to choose a `good' ...
Intra and inter-individual variability in decision making are very common observations both in the w...