The data generated in many application domains can be modeled as big data over networks, i.e., massive collections of high-dimensional local datasets related via an intrinsic network structure. Machine learning for big data over networks must jointly leverage the information contained in the local datasets and their network structure. We propose networked exponential families as a novel probabilistic modeling framework for machine learning from big data over networks. We interpret the high-dimensional local datasets as the realizations of a random process distributed according to some exponential family. Networked exponential families allow us to jointly leverage the information contained in local datasets and their network structure in ord...
Random graphs, where the presence of connections between nodes are considered random variables, have...
A current challenge for data management systems is to support the construction and maintenance of ma...
Large network, as a form of big data, has received increasing amount of attention in data science, e...
The data generated in many application domains can be modeled as big data over networks, i.e., massi...
The data arising in many important applications can be represented as networks. This network represe...
The data arising in many important applications can be represented as networks. This network represe...
We apply network Lasso to solve binary classification and clustering problems on network structured ...
International audienceRepresenting networks in a low dimensional latent space is a crucial task with...
International audienceRepresenting networks in a low dimensional latent space is a crucial task with...
Representing networks in a low dimensional latent space is a crucial task with many interesting appl...
Representing networks in a low dimensional latent space is a crucial task with many interesting appl...
Convex optimization is an essential tool for modern data analysis, as it provides a framework to for...
We apply the network Lasso to classify partially labeled data points which are characterized by high...
Networks are being increasingly used to represent relational data. As the patterns of relations tend...
Networks are being increasingly used to represent relational data. As the patterns of relations tend...
Random graphs, where the presence of connections between nodes are considered random variables, have...
A current challenge for data management systems is to support the construction and maintenance of ma...
Large network, as a form of big data, has received increasing amount of attention in data science, e...
The data generated in many application domains can be modeled as big data over networks, i.e., massi...
The data arising in many important applications can be represented as networks. This network represe...
The data arising in many important applications can be represented as networks. This network represe...
We apply network Lasso to solve binary classification and clustering problems on network structured ...
International audienceRepresenting networks in a low dimensional latent space is a crucial task with...
International audienceRepresenting networks in a low dimensional latent space is a crucial task with...
Representing networks in a low dimensional latent space is a crucial task with many interesting appl...
Representing networks in a low dimensional latent space is a crucial task with many interesting appl...
Convex optimization is an essential tool for modern data analysis, as it provides a framework to for...
We apply the network Lasso to classify partially labeled data points which are characterized by high...
Networks are being increasingly used to represent relational data. As the patterns of relations tend...
Networks are being increasingly used to represent relational data. As the patterns of relations tend...
Random graphs, where the presence of connections between nodes are considered random variables, have...
A current challenge for data management systems is to support the construction and maintenance of ma...
Large network, as a form of big data, has received increasing amount of attention in data science, e...