Evaluation of Models for Analyzing Unguided Search in Unstructured Networks
نویسندگان
چکیده
منابع مشابه
Analysis models for unguided search in unstructured P2P networks
Random walk and flooding are basic mechanisms for searching unstructured overlays. This paper shows that node coverage is an important metric for query performance in random graph based P2P networks. We then present two analytical models: the algebraic model and the combinatorial model. These models are useful in setting query parameters and evaluating search efficiency. We evaluate these two m...
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