The detection of community structure is probably one of the hottest trends in complex network research as it reveals the internal organization of people, molecules or processes behind social, biological or computer networks\dots The issue is to provide a network partition representative of this organization so that each community presumably gathers nodes sharing a common mission, purpose or property. Usually the identification is based on the difference between the connectivity density of the interior and the boundary of a community. Indeed, nodes sharing a common purpose or property are expected to interact closely. Although this rule appears mostly relevant, some fundamental scientific problems like disease module detection highlight the inability to determine significantly the communities under this connectivity rule. The main reason is that the connectivity density is not correlated to a shared property or purpose. Therefore, another paradigm is required for properly formalize this issue in order to meaningfully detect these communities. In this article we study the community formation from this new principle. Considering colors formally figures the shared properties, the issue is thus to maximize group of nodes with the same color within communities.. We study this novel community framework by introducing new measurement called \emph{chromarity} assessing the quality of the community structure regarding this constraint. Next we propose an algorithm solving the community structure detection based on this new community formation paradigm.
翻译:社区结构的检测可能是复杂网络研究中最热门的趋势之一,因为它揭示了社交、生物或计算机网络背后的人员、分子或过程的内部组织...问题在于提供一个代表这种组织的网络分区,以便每个社区可能聚集具有共同使命、目的或属性的节点。通常,识别基于社区内部和边界连接密度之间的差异。实际上,共享共同使命或属性的节点有望紧密交互。虽然这条规则看上去大多数相关,但一些基本的科学问题,如疾病模块检测,强调了不能显著地确定这些连接规则下的社区的无能为力。主要原因是,连接密度不相关于共享的属性或目的。因此,需要另一种范例来恰当地规范这个问题,以便有意义地检测这些社区。在本文中,我们从这个新原则研究社区形成。正式考虑到颜色代表共享属性,问题因此是在社区内最大化具有相同颜色的节点组。我们通过引入新的测量标准“染色度”来研究这个新的社区框架,以评估社区结构关于这个约束的质量。接下来,我们提出了一种基于这种新社区形成范式的社区结构检测算法。