The general context of this thesis is the quantitative analysis of objects coming from rational language theory. We adapt techniques from the field of analysis of algorithms (average-case complexity, generic complexity, random generation...) to objects and algorithms that involve particular classes of automata. In a first part we study the complexity of Brzozowski's minimisation algorithm. Although the worst-case complexity of this algorithm is bad, it is known to be efficient in practice. Using typical properties of random mappings and random permutations, we show that the generic complexityof Brzozowski's algorithm grows faster than any polynomial in n, where n is the number of states of the automaton. In a second part, we study the rando...
In several industrial problems, component layout plays a major role on the performance of the system...
We consider in this thesis the statistical linear inverse problem $Y = Af+ \epsilon \xi$ where $A$ d...
This thesis focuses on machine learning for data classification. To reduce the labelling cost, activ...
This dissertation is devoted to solving systems of nonlinear equations. It presents a survey of vari...
Date de début de la rédaction : 2004This thesis is about of Data Mining in Humanistic. This branch o...
The main objective of the present research works is to propose a contribution in the elastodynamic d...
The subject of this thesis is decided into three parts: two of them are about extensions of the clas...
A critical software is a software whose malfunction may result in death or serious injury to people,...
This thesis, based on the enaction paradigm, addresses the modeling of artificial entities autonomy....
This thesis is devoted to the application of realisability techniques in the study of the computatio...
The growing use of ontologies in a variety of application areas has stimulated the development of ap...
Partial differential equations (PDEs) play a key role in the mathematicalmodelization of phenomena i...
The thesis proposes a sequence learning approach that uses the mechanism of fine grain self-organiza...
We are in the context of the population protocols model. This model, introduced in 2004 by Angluin e...
We present two contributions to the field of parallel programming.The first contribution is theoreti...
In several industrial problems, component layout plays a major role on the performance of the system...
We consider in this thesis the statistical linear inverse problem $Y = Af+ \epsilon \xi$ where $A$ d...
This thesis focuses on machine learning for data classification. To reduce the labelling cost, activ...
This dissertation is devoted to solving systems of nonlinear equations. It presents a survey of vari...
Date de début de la rédaction : 2004This thesis is about of Data Mining in Humanistic. This branch o...
The main objective of the present research works is to propose a contribution in the elastodynamic d...
The subject of this thesis is decided into three parts: two of them are about extensions of the clas...
A critical software is a software whose malfunction may result in death or serious injury to people,...
This thesis, based on the enaction paradigm, addresses the modeling of artificial entities autonomy....
This thesis is devoted to the application of realisability techniques in the study of the computatio...
The growing use of ontologies in a variety of application areas has stimulated the development of ap...
Partial differential equations (PDEs) play a key role in the mathematicalmodelization of phenomena i...
The thesis proposes a sequence learning approach that uses the mechanism of fine grain self-organiza...
We are in the context of the population protocols model. This model, introduced in 2004 by Angluin e...
We present two contributions to the field of parallel programming.The first contribution is theoreti...
In several industrial problems, component layout plays a major role on the performance of the system...
We consider in this thesis the statistical linear inverse problem $Y = Af+ \epsilon \xi$ where $A$ d...
This thesis focuses on machine learning for data classification. To reduce the labelling cost, activ...