We live in the era of big data, nowadays, many companies face data of massive size that, in most cases, cannot be stored and processed on a single computer. Often such data has to be distributed over multiple computers which then makes the storage, pre-processing, and data analysis possible in practice. In the age of big data, distributed learning has gained popularity as a method to manage enormous datasets. In this thesis, we focus on distributed supervised statistical learning where sparse linear regression analysis is performed in a distributed framework. These methods are frequently applied in a variety of disciplines tackling large scale datasets analysis, including engineering, economics, and finance. In distributed learning, one key...
dissertationIn the era of big data, many applications generate continuous online data from distribut...
ABSTRACTThe rise of big data has led to new demands for machine learning (ML) systems to learn compl...
Distributed machine learning bridges the traditional fields of distributed systems and machine learn...
We live in the era of big data, nowadays, many companies face data of massive size that, in most cas...
Distributed statistical learning problems arise commonly when dealing with large datasets. In this s...
Distributed learning provides an attractive framework for scaling the learning task by sharing the c...
We live in an age of big data. Analyzing modern data sets can be very difficult because they usually...
The size of modern datasets has spurred interest in distributed statistical estimation. We consider ...
Machine learning is gaining fresh momentum, and has helped us to enhance not only many industrial an...
<p>Access to data at massive scale has proliferated recently. A significant machine learning challen...
We live in an age of big data. Analyzing modern data sets can be very difficult because they usually...
International audienceThe development of cluster computing frameworks has allowed practitioners to s...
A common approach to statistical learning with big-data is to randomly split it among m machines and...
In this paper, we study a one-shot distributed learning algorithm via refitting Bootstrap samples, w...
The classical framework on distributed inference considers a set of nodes taking measurements and a ...
dissertationIn the era of big data, many applications generate continuous online data from distribut...
ABSTRACTThe rise of big data has led to new demands for machine learning (ML) systems to learn compl...
Distributed machine learning bridges the traditional fields of distributed systems and machine learn...
We live in the era of big data, nowadays, many companies face data of massive size that, in most cas...
Distributed statistical learning problems arise commonly when dealing with large datasets. In this s...
Distributed learning provides an attractive framework for scaling the learning task by sharing the c...
We live in an age of big data. Analyzing modern data sets can be very difficult because they usually...
The size of modern datasets has spurred interest in distributed statistical estimation. We consider ...
Machine learning is gaining fresh momentum, and has helped us to enhance not only many industrial an...
<p>Access to data at massive scale has proliferated recently. A significant machine learning challen...
We live in an age of big data. Analyzing modern data sets can be very difficult because they usually...
International audienceThe development of cluster computing frameworks has allowed practitioners to s...
A common approach to statistical learning with big-data is to randomly split it among m machines and...
In this paper, we study a one-shot distributed learning algorithm via refitting Bootstrap samples, w...
The classical framework on distributed inference considers a set of nodes taking measurements and a ...
dissertationIn the era of big data, many applications generate continuous online data from distribut...
ABSTRACTThe rise of big data has led to new demands for machine learning (ML) systems to learn compl...
Distributed machine learning bridges the traditional fields of distributed systems and machine learn...