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Finding community structure in very large networks.

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TLDR
A hierarchical agglomeration algorithm for detecting community structure which is faster than many competing algorithms: its running time on a network with n vertices and m edges is O (md log n) where d is the depth of the dendrogram describing the community structure.
Abstract
The discovery and analysis of community structure in networks is a topic of considerable recent interest within the physics community, but most methods proposed so far are unsuitable for very large networks because of their computational cost. Here we present a hierarchical agglomeration algorithm for detecting community structure which is faster than many competing algorithms: its running time on a network with n vertices and m edges is O (md log n) where d is the depth of the dendrogram describing the community structure. Many real-world networks are sparse and hierarchical, with m approximately n and d approximately log n, in which case our algorithm runs in essentially linear time, O (n log(2) n). As an example of the application of this algorithm we use it to analyze a network of items for sale on the web site of a large on-line retailer, items in the network being linked if they are frequently purchased by the same buyer. The network has more than 400 000 vertices and 2 x 10(6) edges. We show that our algorithm can extract meaningful communities from this network, revealing large-scale patterns present in the purchasing habits of customers.

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Citations
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Aggregate-related changes in network patterns of nematodes and ammonia oxidizers in an acidic soil

TL;DR: The network analysis is used to decipher the interactions between nematodes and ammonia oxidizers within aggregate fractions under 10-year manure application, and examine their associations with soil variables and potential nitrification activity (PNA).
Journal ArticleDOI

Gut Microbiota as an Objective Measurement for Auxiliary Diagnosis of Insomnia Disorder.

TL;DR: Between insomnia and healthy populations, the composition, diversity and metabolic function of the gut microbiota are significantly changed, and a prediction model utilizing artificial neural network (ANN) for auxiliary diagnosis of insomnia disorder is constructed.
Journal ArticleDOI

A Dynamic Virtual Machine Placement and Migration Scheme for Data Centers

TL;DR: This paper proposes Multi-level Join VM Placement and Migration algorithms based on the relaxed convex optimization framework to approximate the optimal solution and demonstrates the effectiveness of the proposed algorithms that substantially increases data center efficiency.
Proceedings ArticleDOI

Complex networks and social network analysis in information fusion

TL;DR: The basics of complex network models are described and it is pointed out how they can be used for information fusion and analyzing the opponents facing us in international operations.
References
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Journal ArticleDOI

Collective dynamics of small-world networks

TL;DR: Simple models of networks that can be tuned through this middle ground: regular networks ‘rewired’ to introduce increasing amounts of disorder are explored, finding that these systems can be highly clustered, like regular lattices, yet have small characteristic path lengths, like random graphs.

疟原虫var基因转换速率变化导致抗原变异[英]/Paul H, Robert P, Christodoulou Z, et al//Proc Natl Acad Sci U S A

宁北芳, +1 more
TL;DR: PfPMP1)与感染红细胞、树突状组胞以及胎盘的单个或多个受体作用,在黏附及免疫逃避中起关键的作�ly.
Journal ArticleDOI

Statistical mechanics of complex networks

TL;DR: In this paper, a simple model based on the power-law degree distribution of real networks was proposed, which was able to reproduce the power law degree distribution in real networks and to capture the evolution of networks, not just their static topology.
Journal ArticleDOI

The Structure and Function of Complex Networks

Mark Newman
- 01 Jan 2003 - 
TL;DR: Developments in this field are reviewed, including such concepts as the small-world effect, degree distributions, clustering, network correlations, random graph models, models of network growth and preferential attachment, and dynamical processes taking place on networks.
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