6th IEEE Workshop on Parallel and Distributed Processing for Computational Social Systems (ParSocial 2022)

John Korah, Eunice E. Santos
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Abstract

Welcome to the Sixth IEEE Workshop on Parallel and Distributed Processing for Computational Social Systems (ParSocial 2022). This year the workshop highlights novel algorithms and models that leverage parallel computing with applications in social network and social media analysis. The first set of papers focus on the key individual identification problem in social network analysis. The paper by Vandromme et al entitled “Efficient Parallel PageRank Algorithm for Network Analysis” proposes a more efficient parallel algorithm for PageRank that has been shown to improve the time complexity by a factor of two. In a similar vein, the paper by Sahu et al entitled “Dynamic Batch Parallel Algorithms for Updating PageRank” proposes two parallel algorithms for recomputing PageRank of nodes in a dynamic social network that can scale across various architectures. A related research problem is identifying opinion leaders that can improve information dissemination within communities. The paper entitled “Effect of Community-based Opinion Leaders on Guideline Dissemination in Large-Scale Physician Networks” by Murugappan et al, focuses on the problem of the dissemination of medical guidelines. The authors propose a culturally infused agent based model to analyze the effectiveness of various opinion leader selection strategies and the tradeoffs between the reach and rate of spread of medical guideline information. The next set of papers focus on social media analysis. Systems for large scale ingestion of social media data sets can support a wide range of research problems in computational social systems. A step in this direction is taken by authors Huber et al, who have proposed a parallel system for large scale processing of Reddit data in their paper entitled “A Streaming System for Large-scale Mining of Reddit Data”. On the other hand, authors Abeysinghe et al in their short research paper entitled “Unsupervised User Stance Detection on Tweets Against Web Articles Using Sentence Transformers”, have proposed a parallel computing based technique to identify the stance of users using the information and articles shared in their tweets. Finally, the short research paper by Bogle et al entitled “Distributed Algorithms for the Graph Biconnectivity and Least Common Ancestor Problems” focuses on the problem of connectivity in social networks and tackles the problem of identification of cut vertices and edges in networks by formulating a parallel biconnectivity algorithm for distributed graph structures.
第六届IEEE计算社会系统并行和分布式处理研讨会(ParSocial 2022)
欢迎参加第六届IEEE计算社会系统并行和分布式处理研讨会(ParSocial 2022)。今年的研讨会重点介绍了利用并行计算在社交网络和社交媒体分析中的应用的新算法和模型。第一组论文主要关注社会网络分析中关键的个体识别问题。Vandromme等人的一篇题为“用于网络分析的高效并行PageRank算法”的论文提出了一种更有效的并行PageRank算法,该算法已被证明可以将时间复杂度提高两倍。类似地,Sahu等人发表的题为“更新PageRank的动态批处理并行算法”的论文提出了两种并行算法,用于重新计算动态社交网络中节点的PageRank,该算法可以跨各种架构进行扩展。一个相关的研究问题是确定能够改善社区内信息传播的意见领袖。Murugappan等人的论文《以社区为基础的意见领袖对大型医师网络指南传播的影响》,主要关注医疗指南的传播问题。作者提出了一个基于文化主体的模型来分析各种意见领袖选择策略的有效性以及医疗指南信息覆盖面和传播率之间的权衡。下一组论文的重点是社交媒体分析。用于大规模摄取社交媒体数据集的系统可以支持计算社会系统中广泛的研究问题。Huber等人在这个方向上迈出了一步,他们在题为“A Streaming system for large -scale Mining of Reddit data”的论文中提出了一个用于大规模处理Reddit数据的并行系统。另一方面,作者Abeysinghe等人在其题为“使用句子变形器对Web文章进行推文的无监督用户立场检测”的简短研究论文中,提出了一种基于并行计算的技术,利用推文中共享的信息和文章来识别用户的立场。最后,Bogle等人发表的题为“图双连通性和最小共同祖先问题的分布式算法”的简短研究论文侧重于社交网络中的连通性问题,并通过制定分布式图结构的并行双连性算法来解决网络中切割顶点和边缘的识别问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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