دانلود مقاله ISI انگلیسی شماره 125303
ترجمه فارسی عنوان مقاله

الگوریتم تشخیص چند هدفه با تجزیه و تحلیل اهمیت گره در شبکه های وابسته

عنوان انگلیسی
Multi-objective community detection algorithm with node importance analysis in attributed networks
کد مقاله سال انتشار تعداد صفحات مقاله انگلیسی
125303 2018 41 صفحه PDF
منبع

Publisher : Elsevier - Science Direct (الزویر - ساینس دایرکت)

Journal : Applied Soft Computing, Volume 67, June 2018, Pages 434-451

ترجمه کلمات کلیدی
جستجو هارمونی، شناسایی چندین هدف، تجزیه و تحلیل اهمیت گره الگوریتم انتخاب پارتو مبتنی بر پوشش، زمینه بالقوه توپولوژی،
کلمات کلیدی انگلیسی
Harmony search; Multi-objective community detection; Node importance analysis; Pareto envelop-based selection algorithm; Topology potential field;
پیش نمایش مقاله
پیش نمایش مقاله  الگوریتم تشخیص چند هدفه با تجزیه و تحلیل اهمیت گره در شبکه های وابسته

چکیده انگلیسی

Community detection is the act of grouping similar nodes while separating dissimilar ones. The utility of conventional algorithms are limited as they consider a structure based, single objective formulation in which, nodes are treated with the same importance. However, in real networks such as LinkedIn, nodes are not only connected through their structural properties, but also using their associated attributes. In addition, in real networks nodes interact, and this interaction causes some nodes be more important than others. However, conventional algorithms for community detection, do not consider the interactions exists amongst nodes and therefore their utility is limited. To overcome such limitations, this paper introduces a novel Multi-objective Attributed community detection algorithm with Node Importance Analysis (MANIA). The proposed algorithm considers, (i) two objective functions to evaluate the suitability of communities from structure and attribute perspectives, (ii) incorporates nodes’ attribute information to benefit from their stronger discrimination power and (iii) estimates nodes’ importance using, convergence degree and topology potential field. To prove the efficiency of MANIA, its performance is experimentally tested and compared against other novel community detection algorithms using five real-world datasets in terms of homogeneity and modularity objective functions. The comparisons indicate that MANIA detects more meaningful and interpretable communities and significantly outperforms the rivals.