Online Social Networks have embarked on the importance of connection strength measures which has a broad array of applications such as, analyzing diffusion behaviors, community detection, link predictions, recommender systems. Though there are some existing connection strength measures, the density that a connection shares with it's neighbors and the directionality aspect has not received much attention. In this paper, we have proposed an asymmetric edge similarity measure namely, Neighborhood Density-based Edge Similarity (NDES) which provides a fundamental support to derive the strength of connection. The time complexity of NDES is $O(nk^2)$. An application of NDES for community detection in social network is shown. We have considered a similarity based community detection technique and substituted its similarity measure with NDES. The performance of NDES is evaluated on several small real-world datasets in terms of the effectiveness in detecting communities and compared with three widely used similarity measures. Empirical results show NDES enables detecting comparatively better communities both in terms of accuracy and quality.
翻译:在线社会网络已开始重视连接强度措施的重要性,这种措施具有广泛的应用,如分析传播行为、社区检测、链接预测、推荐系统等。虽然有一些现有的连接强度措施,但连接邻居的密度和方向性方面没有受到多少注意。我们在本文件中建议采取不对称边缘相似性措施,即以邻里密度为基础的边缘相似性措施,为获得连接强度提供基本支持。NDES的时间复杂性是$O(nk ⁇ 2)2美元。NDES在社会网络中应用社区检测的方法证明了这一点。我们考虑了基于类似社区检测技术的类似性,并将其与NDES的类似性措施替代了。NDES的业绩根据一些小现实世界的数据集进行了评估,即检测社区的有效性,与三种广泛使用的相似性措施相比较。NDES显示,NDES在准确性和质量方面都能够检测出相对更好的社区。