Given an underlying graph, we consider the following dynamics: Initially, each node locally chooses a value in f1; 1g, uniformly at random and independently of other nodes. Then, in each consecutive round, every node updates its local value to the average of the values held by its neighbors, at the same time applying an elementary, local clustering rule that only depends on the current and the previous values held by the node. We prove that the process resulting from this dynamics produces a clustering that exactly or approximately (depending on the graph) reflects the underlying cut in logarithmic time, under various graph models that exhibit a sparse balanced cut, including the stochastic block model. We also prove that a natural extensio...
International audienceConsider the following asynchronous, opportunistic communication model over a ...
International audienceConsider the following asynchronous, opportunistic communication model over a ...
Abstract Clustering is a fundamental step in many information-retrieval and data-mining applications...
Given an underlying graph, we consider the following dynamics: Initially, each node locally chooses ...
Given an underlying graph, we consider the following dynamics: Initially, each node locally chooses ...
Given an underlying graph, we consider the following dynamics: Initially, each node locally chooses ...
Given an underlying graph, we consider the following dynamics: Initially, each node locally chooses ...
Given an underlying graph, we consider the following dynamics: Initially, each node locally chooses ...
Given an underlying graph, we consider the following dynamics: Initially, each node locally chooses ...
Given an underlying graph, we consider the following dynamics: Initially, each node locally chooses ...
Given an underlying graph, we consider the following dynamics: Initially, each node locally chooses ...
Given an underlying graph, we consider the following dynamics: Initially, each node locally chooses ...
Given an underlying graph, we consider the following dynamics: Initially, each node locally choose...
International audienceGiven an underlying graph, we consider the following dynamics: Initially, each...
International audienceGiven an underlying graph, we consider the following dynamics: Initially, each...
International audienceConsider the following asynchronous, opportunistic communication model over a ...
International audienceConsider the following asynchronous, opportunistic communication model over a ...
Abstract Clustering is a fundamental step in many information-retrieval and data-mining applications...
Given an underlying graph, we consider the following dynamics: Initially, each node locally chooses ...
Given an underlying graph, we consider the following dynamics: Initially, each node locally chooses ...
Given an underlying graph, we consider the following dynamics: Initially, each node locally chooses ...
Given an underlying graph, we consider the following dynamics: Initially, each node locally chooses ...
Given an underlying graph, we consider the following dynamics: Initially, each node locally chooses ...
Given an underlying graph, we consider the following dynamics: Initially, each node locally chooses ...
Given an underlying graph, we consider the following dynamics: Initially, each node locally chooses ...
Given an underlying graph, we consider the following dynamics: Initially, each node locally chooses ...
Given an underlying graph, we consider the following dynamics: Initially, each node locally chooses ...
Given an underlying graph, we consider the following dynamics: Initially, each node locally choose...
International audienceGiven an underlying graph, we consider the following dynamics: Initially, each...
International audienceGiven an underlying graph, we consider the following dynamics: Initially, each...
International audienceConsider the following asynchronous, opportunistic communication model over a ...
International audienceConsider the following asynchronous, opportunistic communication model over a ...
Abstract Clustering is a fundamental step in many information-retrieval and data-mining applications...