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Personal recommendation via unequal resource allocation on bipartite networks

โœ Scribed by Run-Ran Liu; Jian-Guo Liu; Chun-Xiao Jia; Bing-Hong Wang


Book ID
103884410
Publisher
Elsevier Science
Year
2010
Tongue
English
Weight
400 KB
Volume
389
Category
Article
ISSN
0378-4371

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โœฆ Synopsis


In this paper, we present a recommendation algorithm based on the resource-allocation progresses on bipartite networks. In this model, each node is assigned an attraction that is proportional to the power of its degree, where the exponent ฮฒ is an adjustable parameter that controls the configuration of attractions. In the resource-allocation process, each transmitter distributes its each neighbor a fragment of resource that is proportional to the attraction of the neighbor. Based on a benchmark database, we find that decreasing the attractions that the nodes with higher degrees are assigned can further improve the algorithmic accuracy. More significantly, numerical results show that the optimal configuration of attractions subject to accuracy can also generate more diverse and less popular recommendations.


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