International audienceWe consider supervised learning problems where the features are embedded in a graph, such as gene expressions in a gene network. In this context, it is of much interest to automatically select a subgraph with few connected components; by exploiting prior knowledge, one can indeed improve the prediction performance or obtain results that are easier to interpret. Regularization or penalty functions for selecting features in graphs have recently been proposed, but they raise new algorithmic challenges. For example, they typically require solving a combinatorially hard selection problem among all connected subgraphs. In this paper, we propose computationally feasible strategies to select a sparse and well-connected subset ...
Many learning and inference problems involve high-dimensional data such as images, video or genomic ...
In achieving structural patterns in parameters, we focus on two challenging cases in which (1) hiera...
In this paper, we propose a unified framework for improved structure estimation and feature selectio...
We consider supervised learning problems where the features are embedded in a graph, such as gene ex...
Graph data such as chemical compounds and XML documents are getting more common in many application ...
© 2015 Elsevier Ltd. All rights reserved. Classification on structure data, such as graphs, has draw...
In this dissertation we examine two topics relevant to modern machine learning research: 1) Subgraph...
Graph classification is an increasingly important step in numerous application domains, such as func...
Many real-world applications generate attributed graphs that contain both link structures and conten...
Curiosity of human nature drives us to explore the origins of what makes each of us different. From ...
abstract: Sparse learning is a powerful tool to generate models of high-dimensional data with high i...
Directed acyclic graphs are commonly used to represent causal relationships among random variables i...
University of Minnesota Ph.D. dissertation. June 2014. Major: Statistics. Advisor: Xiaotong Shen. 1 ...
Supervised learning over graphs is an intrinsically difficult problem: simultaneous learning of rele...
Directed networks are conveniently represented as graphs in which ordered edges encode interactions ...
Many learning and inference problems involve high-dimensional data such as images, video or genomic ...
In achieving structural patterns in parameters, we focus on two challenging cases in which (1) hiera...
In this paper, we propose a unified framework for improved structure estimation and feature selectio...
We consider supervised learning problems where the features are embedded in a graph, such as gene ex...
Graph data such as chemical compounds and XML documents are getting more common in many application ...
© 2015 Elsevier Ltd. All rights reserved. Classification on structure data, such as graphs, has draw...
In this dissertation we examine two topics relevant to modern machine learning research: 1) Subgraph...
Graph classification is an increasingly important step in numerous application domains, such as func...
Many real-world applications generate attributed graphs that contain both link structures and conten...
Curiosity of human nature drives us to explore the origins of what makes each of us different. From ...
abstract: Sparse learning is a powerful tool to generate models of high-dimensional data with high i...
Directed acyclic graphs are commonly used to represent causal relationships among random variables i...
University of Minnesota Ph.D. dissertation. June 2014. Major: Statistics. Advisor: Xiaotong Shen. 1 ...
Supervised learning over graphs is an intrinsically difficult problem: simultaneous learning of rele...
Directed networks are conveniently represented as graphs in which ordered edges encode interactions ...
Many learning and inference problems involve high-dimensional data such as images, video or genomic ...
In achieving structural patterns in parameters, we focus on two challenging cases in which (1) hiera...
In this paper, we propose a unified framework for improved structure estimation and feature selectio...