International audienceEstimating the frequency of any piece of informa- tion in large-scale distributed data streams became of utmost importance in the last decade (e.g., in the context of network monitoring, big data, etc.). If some elegant solutions have been proposed recently, their approximation is computed from the inception of the stream. In a runtime distributed context, one would prefer to gather information only about the recent past. This may be led by the need to save resources or by the fact that recent information is more relevant.In this paper, we consider the sliding window model and propose two different (on-line) algorithms that approximate the items frequency in the active window. More precisely, we determine a (ε, δ)-addi...
In the last few years, we have been witnessing a rapid growth of networks in a wide range of applica...
The Big Data era has revolutionized the way in which data is created and processed. In this context,...
Wireless Sensor Networks (WSNs) have gained much attention in a large range of technical fields such...
International audienceEstimating the frequency of any piece of informa- tion in large-scale distribu...
The purpose of this thesis is to tackle three problems inspired by large distributed systems. The to...
Data and function approximation is fundamental in application domains like path planning or signal p...
In this thesis, we explore two problems related to managing and mining moving object trajectories. F...
The impressive breakthroughs of the last two decades in the field of machine learning can be in larg...
The internet and recent architectures such as sensor networks are currently witnessing tremendous an...
Predicting the diffusion of information in social networks is a key problem for applications like Op...
International audienceL'analyse à la volée de flux massifs potentiellement infinis est fondamental d...
Au cours des dernières décennies, les systèmes intelligents, tels que l’apprentissage automatique et...
This thesis proposes a three signal-processing methods oriented towards the condition monitoring and...
In this thesis, we describe and analyze a fully distributed approach for parallel Branch-and-Bound. ...
The complexity theory distinguishes between problems that are known to be solved in polynomial time ...
In the last few years, we have been witnessing a rapid growth of networks in a wide range of applica...
The Big Data era has revolutionized the way in which data is created and processed. In this context,...
Wireless Sensor Networks (WSNs) have gained much attention in a large range of technical fields such...
International audienceEstimating the frequency of any piece of informa- tion in large-scale distribu...
The purpose of this thesis is to tackle three problems inspired by large distributed systems. The to...
Data and function approximation is fundamental in application domains like path planning or signal p...
In this thesis, we explore two problems related to managing and mining moving object trajectories. F...
The impressive breakthroughs of the last two decades in the field of machine learning can be in larg...
The internet and recent architectures such as sensor networks are currently witnessing tremendous an...
Predicting the diffusion of information in social networks is a key problem for applications like Op...
International audienceL'analyse à la volée de flux massifs potentiellement infinis est fondamental d...
Au cours des dernières décennies, les systèmes intelligents, tels que l’apprentissage automatique et...
This thesis proposes a three signal-processing methods oriented towards the condition monitoring and...
In this thesis, we describe and analyze a fully distributed approach for parallel Branch-and-Bound. ...
The complexity theory distinguishes between problems that are known to be solved in polynomial time ...
In the last few years, we have been witnessing a rapid growth of networks in a wide range of applica...
The Big Data era has revolutionized the way in which data is created and processed. In this context,...
Wireless Sensor Networks (WSNs) have gained much attention in a large range of technical fields such...