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Aggregating Edge Weights in Social Networks on the Web Extracted from Multiple Sources with Different Importance Degrees
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作者 Rasim M. Alguliev Ramiz M. Aliguliyev fadai s. ganjaliyev 《Journal of Intelligent Learning Systems and Applications》 2012年第2期154-158,共5页
Information on a given set of entities can be derived from multiple sources on the Web. Social networks built from these sources, using these entities as nodes, will have different edge weight values, although the ent... Information on a given set of entities can be derived from multiple sources on the Web. Social networks built from these sources, using these entities as nodes, will have different edge weight values, although the entities will be the same. If these sources are different, one will not normally trust each of them equally. One source will be considered more or less importance than the other. Completely ignoring sources with little importance may yield unexpected results. In this paper, we propose a method for aggregating weight values for social networks built from the Web using different sources. First, multiple social networks are built from different data sources. Then the received edge weights are aggregated, with the importance of a data source taken into account. 展开更多
关键词 OWA OPERATOR Orness Data SOURCE
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