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Stochastic processes / Markov processes / Markov chain / Random walk / Random graph / Degree distribution / Matrices / Central limit theorem / Loop-erased random walk / Statistics / Mathematics / Graph theory
Date: 2005-07-06 08:19:10
Stochastic processes
Markov processes
Markov chain
Random walk
Random graph
Degree distribution
Matrices
Central limit theorem
Loop-erased random walk
Statistics
Mathematics
Graph theory

Mixing Times for Random Walks on Geometric Random Graphs Stephen Boyd Arpita Ghosh

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