Despite mounting evidence that human learners are sensitive to community structure underpinning temporal sequences, this phenomenon has been studied using an extremely narrow set of network ensembles. The extent to which behavioral signatures of learning are robust to changes in community size and number is the focus of the present work. Here we present adult participants with a continuous stream of novel objects generated by a random walk along graphs of 1, 2, 3, 4, or 6 communities comprised of N = 24, 12, 8, 6, and 4 nodes, respectively. Nodes of the graph correspond to a unique object and edges correspond to their immediate succession in the stream. In short, we find that previously observed processing costs associated with community bo...
Networks are abstract representations of systems in which objects called "nodes" interact with each ...
International audienceThis article is about multi-agent collective learning in networks. An agent re...
This dissertation aims to address the statistical consistency for two classical structural learning ...
Community structures have been identified in various complex real-world networks, for example, commu...
Networks are an abstract representation of connections (the "edges") between entities (the "nodes")....
In recent years, there has been a surge of interest in community detection algorithms for complex ne...
In recent years, there has been a surge of interest in community detection algorithms for complex ne...
BACKGROUND: Community structure is one of the key properties of complex networks and plays a crucial...
Many real-world networks display a community structure. We study two random graph models that create...
We consider relations of structure and dynamics in complex networks. Firstly, a dynamical perspectiv...
Background Community structure is one of the key properties of complex networks and plays a crucial ...
Current approaches to dynamic community detection in complex networks can fail to identify multi-sca...
Community detection algorithms have been widely used to study the organization of complex networks l...
Community detection algorithms have been widely used to study the organization of complex networks l...
International audienceMany algorithms have been proposed in the last ten years for the discovery of ...
Networks are abstract representations of systems in which objects called "nodes" interact with each ...
International audienceThis article is about multi-agent collective learning in networks. An agent re...
This dissertation aims to address the statistical consistency for two classical structural learning ...
Community structures have been identified in various complex real-world networks, for example, commu...
Networks are an abstract representation of connections (the "edges") between entities (the "nodes")....
In recent years, there has been a surge of interest in community detection algorithms for complex ne...
In recent years, there has been a surge of interest in community detection algorithms for complex ne...
BACKGROUND: Community structure is one of the key properties of complex networks and plays a crucial...
Many real-world networks display a community structure. We study two random graph models that create...
We consider relations of structure and dynamics in complex networks. Firstly, a dynamical perspectiv...
Background Community structure is one of the key properties of complex networks and plays a crucial ...
Current approaches to dynamic community detection in complex networks can fail to identify multi-sca...
Community detection algorithms have been widely used to study the organization of complex networks l...
Community detection algorithms have been widely used to study the organization of complex networks l...
International audienceMany algorithms have been proposed in the last ten years for the discovery of ...
Networks are abstract representations of systems in which objects called "nodes" interact with each ...
International audienceThis article is about multi-agent collective learning in networks. An agent re...
This dissertation aims to address the statistical consistency for two classical structural learning ...