Diffusive capture processes for information search
classification
⚛️ physics.soc-ph
physics.gen-ph
keywords
networksalgorithmcapturediffusiveinformationmodelprocessessearch
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We show how effectively the diffusive capture processes (DCP) on complex networks can be applied to information search in the networks. Numerical simulations show that our method generates only 2% of traffic compared with the most popular flooding-based query-packet-forwarding (FB) algorithm. We find that the average searching time, $<T>$, of the our model is more scalable than another well known $n$-random walker model and comparable to the FB algorithm both on real Gnutella network and scale-free networks with $\gamma =2.4$. We also discuss the possible relationship between $<T>$ and $<k^2>$, the second moment of the degree distribution of the networks.
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