首页> 外文会议>International conference on Asian-Pacific digital libraries >Analyzing Trust-Based Mixing Patterns in Signed Networks
【24h】

Analyzing Trust-Based Mixing Patterns in Signed Networks

机译:分析签名网络中基于信任的混合模式

获取原文

摘要

In some online social media such as Slashdot, actors are allowed to explicitly show their trust or distrust towards each other. Such a network, called a signed network, contains positive and negative edges. Traditional notions of assortativity and disassortativity are not sufficient to study the mixing patterns of connections between actors in a signed network, owing to the presence of negative edges. Towards this end, we propose two additional notions of mixing due to negative edges - anti-assortativity and anti-disassortativity - which pertain to the show of distrust towards "similar" nodes and "dissimilar" nodes respectively. We classify nodes based on a local measure of their trustworthiness, rather than based on in-degrees, in order to study mixing patterns. We also use some simple techniques to quantify a node's bias towards assortativity, disassortativity, anti-assortativity and anti-disassortativity in a signed network. Our experiments with the Slashdot Zoo network suggest that: (ⅰ) "low-trust" nodes show varied forms of mixing - reasonable assortativity, high disassortativity, slight anti-assortativity and slight anti-disassortativity, and (ⅱ) "high-trust" nodes mix highly assor-tatively while showing very little disassortativity, anti-assortativity or anti-disassortativity.
机译:在某些在线社交媒体(例如Slashdot)中,允许演员明确表示彼此之间的信任或不信任。这样的网络称为有符号网络,包含正边缘和负边缘。由于存在负边缘,传统的分类性和非分类性概念不足以研究签名网络中角色之间连接的混合模式。为此,我们提出了由于负边缘而引起的混合的另外两个概念-反分类性和反分类性-分别表示对“相似”节点和“不同”节点的不信任。为了研究混合模式,我们基于对节点的可信度的本地度量(而不是基于度数)对节点进行分类。我们还使用一些简单的技术来量化节点对有符号网络中的分类性,非分类性,反分类性和反分类性的偏见。我们在Slashdot Zoo网络上进行的实验表明:(ⅰ)“低信任度”节点表现出多种混合形式-合理的分类性,高度的非分类性,轻微的反分类性和轻微的反分类性,以及(ⅱ)“高度信任”节点高度混合,但几乎没有分解,反分解或反分解。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号