abstract: This dissertation studies routing in small-world networks such as grids plus long-range edges and real networks. Kleinberg showed that geography-based greedy routing in a grid-based network takes an expected number of steps polylogarithmic in the network size, thus justifying empirical efficiency observed beginning with Milgram. A counterpart for the grid-based model is provided; it creates all edges deterministically and shows an asymptotically matching upper bound on the route length. The main goal is to improve greedy routing through a decentralized machine learning process. Two considered methods are based on weighted majority and an algorithm of de Farias and Megiddo, both learning from feedback using ensembles of experts. Te...
We investigate the problem of efficiently preprocessing a large network, in afully distributed manner,...
AbstractSince a spatial distribution of communication requests is inhomogeneous and related to a pop...
Discovering dense subparts, called communities, in complex networks is a fundamental issue in data a...
International audienceIn this paper we study decentralized routing in small-world networks that comb...
During this internship, we have studied decentralized routing in small-world networks. Our model is ...
In this paper we present a novel strategy to discover the community structure of (possibly, large) n...
Abstract—In this paper we present a novel strategy to discover the community structure of (possibly,...
Recently a bulk of research [14, 5, 15, 9] has been done on the modelling of the smallworld phenomen...
The neighborhood overlap (NOVER) of an edge u-v is defined as the ratio of the number of nodes who a...
The algorithmic small-world phenomenon, empirically established by Milgram's letter forwarding exper...
Kleinberg provides the first theoretical characterization of the algorithmic aspects of small-world ...
Abstract—In his seminal work, Jon Kleinberg considers a small-world network model consisting of a k-...
Complex networks such as social networks and biological networks represent complex systems in the re...
Since a spatial distribution of communication requests is inhomogeneous and related to a population,...
International audienceBy considering the task of finding the shortest walk through a Network, we fin...
We investigate the problem of efficiently preprocessing a large network, in afully distributed manner,...
AbstractSince a spatial distribution of communication requests is inhomogeneous and related to a pop...
Discovering dense subparts, called communities, in complex networks is a fundamental issue in data a...
International audienceIn this paper we study decentralized routing in small-world networks that comb...
During this internship, we have studied decentralized routing in small-world networks. Our model is ...
In this paper we present a novel strategy to discover the community structure of (possibly, large) n...
Abstract—In this paper we present a novel strategy to discover the community structure of (possibly,...
Recently a bulk of research [14, 5, 15, 9] has been done on the modelling of the smallworld phenomen...
The neighborhood overlap (NOVER) of an edge u-v is defined as the ratio of the number of nodes who a...
The algorithmic small-world phenomenon, empirically established by Milgram's letter forwarding exper...
Kleinberg provides the first theoretical characterization of the algorithmic aspects of small-world ...
Abstract—In his seminal work, Jon Kleinberg considers a small-world network model consisting of a k-...
Complex networks such as social networks and biological networks represent complex systems in the re...
Since a spatial distribution of communication requests is inhomogeneous and related to a population,...
International audienceBy considering the task of finding the shortest walk through a Network, we fin...
We investigate the problem of efficiently preprocessing a large network, in afully distributed manner,...
AbstractSince a spatial distribution of communication requests is inhomogeneous and related to a pop...
Discovering dense subparts, called communities, in complex networks is a fundamental issue in data a...