This thesis focuses on two topics of graph algorithms. The first topic is network inference. How efficiently can we find an unknown graph using shortest path queries between its vertices? We assume that the graph has bounded degree. In the reconstruction problem, the goal is to find the graph; and in the verification problem, the goal is to check whether a given graph is correct. We provide randomized algorithms based on a Voronoi cell decomposition. Next, we analyze greedy algorithms, and show that they are near-optimal. We also study the problems on special graph classes, prove lower bounds, and study the approximate reconstruction. The second topic is optimization in planar graphs. We study two problems. In the correlation clustering pro...
Given a planar graph G=(V,E) and a vertex set Wsubseteq V , the subgraph induced planar connectivity...
We study NP-hard problems on graphs with blockages seen as models of networks which are exposed to r...
The field of pattern recognition developed significantly in the 1960s, and the field of random graph...
This thesis focuses on two topics of graph algorithms. The first topic is network inference. How eff...
In correlation clustering, the input is a graph with edge-weights, where every edge is labelled eit...
This thesis is about structural and algorithmic aspects of graphs. It is divided in two parts, which...
Graphs are an essential topic in machine learning. In this proposal, we explore problems in graphica...
This thesis focuses on statistical inference in graphs (or matrices) in high dimensionand studies th...
Nous étudions plusieurs problèmes d amélioration de réseaux qui consistent à ajouter de nouvelles li...
This thesis focuses on using theoretical tools of computer science to improve algorithms in practice...
We address a collection of related connectivity and cut problems in simple graphs that reach from th...
On s'intéresse dans cette thèse à trois problèmes algorithmiques dans les graphes.Dans un premier te...
We investigate three main questions in this thesis. The first two are related tograph algorithmic pr...
We consider the following clustering problem: we have a complete graph on vertices (items), where e...
We start by studying the class of k-degenerate graphs which are often used to model sparse real-worl...
Given a planar graph G=(V,E) and a vertex set Wsubseteq V , the subgraph induced planar connectivity...
We study NP-hard problems on graphs with blockages seen as models of networks which are exposed to r...
The field of pattern recognition developed significantly in the 1960s, and the field of random graph...
This thesis focuses on two topics of graph algorithms. The first topic is network inference. How eff...
In correlation clustering, the input is a graph with edge-weights, where every edge is labelled eit...
This thesis is about structural and algorithmic aspects of graphs. It is divided in two parts, which...
Graphs are an essential topic in machine learning. In this proposal, we explore problems in graphica...
This thesis focuses on statistical inference in graphs (or matrices) in high dimensionand studies th...
Nous étudions plusieurs problèmes d amélioration de réseaux qui consistent à ajouter de nouvelles li...
This thesis focuses on using theoretical tools of computer science to improve algorithms in practice...
We address a collection of related connectivity and cut problems in simple graphs that reach from th...
On s'intéresse dans cette thèse à trois problèmes algorithmiques dans les graphes.Dans un premier te...
We investigate three main questions in this thesis. The first two are related tograph algorithmic pr...
We consider the following clustering problem: we have a complete graph on vertices (items), where e...
We start by studying the class of k-degenerate graphs which are often used to model sparse real-worl...
Given a planar graph G=(V,E) and a vertex set Wsubseteq V , the subgraph induced planar connectivity...
We study NP-hard problems on graphs with blockages seen as models of networks which are exposed to r...
The field of pattern recognition developed significantly in the 1960s, and the field of random graph...