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楼主: Racket
发表于 2025-3-25 03:35:57 | 显示全部楼层
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Patterns in Weighted Graphsckets), where timestamp is in increments of, say, 30 minutes. Thus, we have multi-edges, as well as total weight for each (source, destination) pair. Let . be the total weight up to time . (i.e., the grand total of all exchanged packets across all pairs), . the number of distinct edges up to time .,
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The , (Recursive MATrix) Graph Generatoro all the others. There is also the question of how to fit model parameters to match a given graph. What we would like is a tradeoff between parsimony (few model parameters), realism (matching most graph patterns, if not all), and efficiency (in parameter fitting and graph generation speed). In this
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Community Detections believed to exist) in many real-world graphs, especially social networks: Moody [212] finds groupings based on race and age in a network of friendships in one American school;, Schwartz and Wood [244] group people with shared interests from email logs; Borgs et al. [57] find communities from “cros
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https://doi.org/10.1007/978-3-658-06169-2ic?” This happens when the synthetic graph matches all (or at least several) of the patterns mentioned in the previous chapters. Graph generators can provide insight into graph creation, by telling us which processes can (or cannot) lead to the development of certain patterns.
发表于 2025-3-26 20:52:54 | 显示全部楼层
Mikroprozessoren in der Energiewirtschaftit is easier (cheaper) to link two routers which are physically close to each other; most of our social contacts are people we meet often, and who consequently probably live close to us (say, in the same town or city); and so on. In the following paragraphs, we discuss some important models which tr
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