Large graphs abound in machine learning, data mining, and several related areas. A useful step towards analyzing such graphs is that of obtaining certain summary statistics — e.g., or the expected length of a shortest path between two nodes, or the expected weight of a minimum spanning tree of the graph, etc. These statistics provide insight into the structure of a graph, and they can help predict global properties of a graph. Motivated thus, we propose to study statistical properties of structured subgraphs (of a given graph), in particular, to estimate the expected objective function value of a combinatorial optimization problem over these subgraphs. The general task is very difficult, if not unsolvable; so for concreteness we describe a...
We study block statistics in subcritical graph classes; these are statistics that can be defined as ...
We give an asymptotic expression for the expected number of spanning trees in a random graph with a...
International audienceThe problem of predicting connections between a set of data points finds many ...
Large graphs abound in machine learning, data mining, and several related areas. A useful step towar...
<div><p>Many statistical methods gain robustness and flexibility by sacrificing convenient computati...
We study graph estimation and density estimation in high dimensions, using a family of density estim...
We address the issue of recovering the structure of large sparse directed acyclic graphs from noisy ...
A complete weighted graph, (Formula presented.) , is considered. Let (Formula presented.) be some su...
This thesis addresses statistical estimation and testing of signals over a graph when measurements a...
To analyse the demands made on the garbage collector in a graph reduction system, the change in size...
We study a probabilistic optimization model for graph-problems under vertex-uncertainty. We assume t...
This paper examines methods for predicting and estimating the number of maximal cliques in a random ...
An identifying code of a graph is a dominating set which uniquely determines all the vertices by the...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Mathematics, 2019Cataloged from...
© 2005 by Chapman & Hall/CRC Press. Graph theory offers a rich source of problems and techniques f...
We study block statistics in subcritical graph classes; these are statistics that can be defined as ...
We give an asymptotic expression for the expected number of spanning trees in a random graph with a...
International audienceThe problem of predicting connections between a set of data points finds many ...
Large graphs abound in machine learning, data mining, and several related areas. A useful step towar...
<div><p>Many statistical methods gain robustness and flexibility by sacrificing convenient computati...
We study graph estimation and density estimation in high dimensions, using a family of density estim...
We address the issue of recovering the structure of large sparse directed acyclic graphs from noisy ...
A complete weighted graph, (Formula presented.) , is considered. Let (Formula presented.) be some su...
This thesis addresses statistical estimation and testing of signals over a graph when measurements a...
To analyse the demands made on the garbage collector in a graph reduction system, the change in size...
We study a probabilistic optimization model for graph-problems under vertex-uncertainty. We assume t...
This paper examines methods for predicting and estimating the number of maximal cliques in a random ...
An identifying code of a graph is a dominating set which uniquely determines all the vertices by the...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Mathematics, 2019Cataloged from...
© 2005 by Chapman & Hall/CRC Press. Graph theory offers a rich source of problems and techniques f...
We study block statistics in subcritical graph classes; these are statistics that can be defined as ...
We give an asymptotic expression for the expected number of spanning trees in a random graph with a...
International audienceThe problem of predicting connections between a set of data points finds many ...