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Examining the importance of existing relationships for co-offending: a temporal network analysis in Bogotá, Colombia (2005–2018) 考察现有关系对共同犯罪的重要性:哥伦比亚波哥大<e:1>(2005-2018)的时间网络分析
IF 2.2 Q3 COMPUTER SCIENCE, THEORY & METHODS Pub Date : 2023-01-13 DOI: 10.1007/s41109-023-00531-0
Alberto Nieto, Toby P Davies, H. Borrion
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引用次数: 0
Convergence properties of optimal transport-based temporal hypergraphs 基于最优传输的时间超图的收敛性
IF 2.2 Q3 COMPUTER SCIENCE, THEORY & METHODS Pub Date : 2023-01-11 DOI: 10.1007/s41109-022-00529-0
Diego Baptista, C. D. Bacco
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引用次数: 0
Centrality-based lane interventions in road networks for improved level of service: the case of downtown Boise, Idaho 以提高服务水平为目的的道路网络中基于中心的车道干预:爱达荷州博伊西市中心的案例
IF 2.2 Q3 COMPUTER SCIENCE, THEORY & METHODS Pub Date : 2023-01-09 DOI: 10.1007/s41109-023-00532-z
Md Ashraf Ahmed, H. M. I. Kays, A. M. Sadri
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引用次数: 1
A combined synchronization index for evaluating collective action social media. 一种评价集体行动社交媒体的联合同步指标。
IF 2.2 Q3 COMPUTER SCIENCE, THEORY & METHODS Pub Date : 2023-01-01 DOI: 10.1007/s41109-022-00526-3
Lynnette Hui Xian Ng, Kathleen M Carley

Social media has provided a citizen voice, giving rise to grassroots collective action, where users deploy a concerted effort to disseminate online narratives and even carry out offline protests. Sometimes these collective action are aided by inorganic synchronization, which arise from bot actors. It is thus important to identify the synchronicity of emerging discourse on social media and the indications of organic/inorganic activity within the conversations. This provides a way of profiling an event for possibility of offline protests and violence. In this study, we build on past definitions of synchronous activity on social media- simultaneous user action-and develop a Combined Synchronization Index (CSI) which adopts a hierarchical approach in measuring user synchronicity. We apply this index on six political and social activism events on Twitter and analyzed three action types: synchronicity by hashtag, URL and @mentions.The CSI provides an overall quantification of synchronization across all action types within an event, which allows ranking of a spectrum of synchronicity across the six events. Human users have higher synchronous scores than bot users in most events; and bots and humans exhibits the most synchronized activities across all events as compared to other pairs (i.e., bot-bot and human-human). We further rely on the harmony and dissonance of CSI-Network scores with network centrality metrics to observe the presence of organic/inorganic synchronization. We hope this work aids in investigating synchronized action within social media in a collective manner.

社交媒体提供了公民的声音,引发了基层集体行动,用户齐心协力传播在线叙事,甚至进行线下抗议。有时,这些集体行动得到无机同步的帮助,这是由bot参与者产生的。因此,确定社交媒体上新兴话语的同步性以及对话中有机/无机活动的迹象是很重要的。这提供了一种分析事件是否可能发生线下抗议和暴力的方法。在本研究中,我们以过去对社交媒体同步活动的定义为基础——同步用户行动,并开发了一个联合同步指数(CSI),该指数采用分层方法来衡量用户同步性。我们将该指数应用于Twitter上的六个政治和社会活动事件,并分析了三种行动类型:标签、URL和@提及的同步性。CSI提供了一个事件中所有操作类型之间同步的总体量化,它允许对六个事件之间的同步度进行排序。在大多数事件中,人类用户的同步得分高于机器人用户;与其他配对(即bot-bot和human-human)相比,bot和human在所有事件中表现出最同步的活动。我们进一步依靠CSI-Network得分与网络中心性指标的和谐与不和谐来观察有机/无机同步的存在。我们希望这项工作有助于以集体方式调查社交媒体中的同步行动。
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引用次数: 3
Predicting variable-length paths in networked systems using multi-order generative models. 使用多阶生成模型预测网络系统中的可变长度路径。
IF 2.2 Q3 COMPUTER SCIENCE, THEORY & METHODS Pub Date : 2023-01-01 Epub Date: 2023-09-22 DOI: 10.1007/s41109-023-00596-x
Christoph Gote, Giona Casiraghi, Frank Schweitzer, Ingo Scholtes

Apart from nodes and links, for many networked systems, we have access to data on paths, i.e., collections of temporally ordered variable-length node sequences that are constrained by the system's topology. Understanding the patterns in such data is key to advancing our understanding of the structure and dynamics of complex systems. Moreover, the ability to accurately model and predict paths is important for engineered systems, e.g., to optimise supply chains or provide smart mobility services. Here, we introduce MOGen, a generative modelling framework that enables both next-element and out-of-sample prediction in paths with high accuracy and consistency. It features a model selection approach that automatically determines the optimal model directly from data, effectively making MOGen parameter-free. Using empirical data, we show that our method outperforms state-of-the-art sequence modelling techniques. We further introduce a mathematical formalism that links higher-order models of paths to transition matrices of random walks in multi-layer networks.

除了节点和链路,对于许多联网系统,我们还可以访问路径上的数据,即受系统拓扑约束的时间有序可变长度节点序列的集合。了解这些数据中的模式是推进我们对复杂系统结构和动力学理解的关键。此外,准确建模和预测路径的能力对于工程系统很重要,例如,优化供应链或提供智能移动服务。在这里,我们介绍了MOGen,这是一种生成性建模框架,能够在路径中实现下一个元素和样本外预测,具有高精度和一致性。它采用了一种模型选择方法,可以直接从数据中自动确定最佳模型,有效地使MOGen参数自由。使用经验数据,我们表明我们的方法优于最先进的序列建模技术。我们进一步引入了一种数学形式,将路径的高阶模型与多层网络中随机游动的转移矩阵联系起来。
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引用次数: 3
Overcoming vaccine hesitancy by multiplex social network targeting: an analysis of targeting algorithms and implications. 通过多重社交网络靶向克服疫苗犹豫:靶向算法和影响分析。
IF 2.2 Q3 COMPUTER SCIENCE, THEORY & METHODS Pub Date : 2023-01-01 Epub Date: 2023-09-21 DOI: 10.1007/s41109-023-00595-y
Marzena Fügenschuh, Feng Fu

Incorporating social factors into disease prevention and control efforts is an important undertaking of behavioral epidemiology. The interplay between disease transmission and human health behaviors, such as vaccine uptake, results in complex dynamics of biological and social contagions. Maximizing intervention adoptions via network-based targeting algorithms by harnessing the power of social contagion for behavior and attitude changes largely remains a challenge. Here we address this issue by considering a multiplex network setting. Individuals are situated on two layers of networks: the disease transmission network layer and the peer influence network layer. The disease spreads through direct close contacts while vaccine views and uptake behaviors spread interpersonally within a potentially virtual network. The results of our comprehensive simulations show that network-based targeting with pro-vaccine supporters as initial seeds significantly influences vaccine adoption rates and reduces the extent of an epidemic outbreak. Network targeting interventions are much more effective by selecting individuals with a central position in the opinion network as compared to those grouped in a community or connected professionally. Our findings provide insight into network-based interventions to increase vaccine confidence and demand during an ongoing epidemic.

将社会因素纳入疾病预防和控制工作是行为流行病学的一项重要任务。疾病传播和人类健康行为(如疫苗接种)之间的相互作用导致了生物和社会传染的复杂动态。通过利用社会传染力改变行为和态度,通过基于网络的目标定位算法最大限度地采取干预措施,这在很大程度上仍然是一个挑战。在这里,我们通过考虑多路复用网络设置来解决这个问题。个体位于两层网络上:疾病传播网络层和同伴影响网络层。疾病通过直接的密切接触传播,而疫苗的观点和接种行为则在潜在的虚拟网络中人际传播。我们的综合模拟结果表明,以支持疫苗的支持者为初始种子的网络靶向显著影响疫苗的采用率,并降低流行病爆发的程度。与在社区中分组或专业联系的人相比,通过选择在意见网络中处于中心位置的个人,网络定向干预要有效得多。我们的研究结果为在持续的流行病期间增加疫苗信心和需求的基于网络的干预措施提供了见解。
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引用次数: 1
A methodology framework for bipartite network modeling. 二部网络建模的方法学框架。
IF 2.2 Q3 COMPUTER SCIENCE, THEORY & METHODS Pub Date : 2023-01-01 DOI: 10.1007/s41109-023-00533-y
Chin Ying Liew, Jane Labadin, Woon Chee Kok, Monday Okpoto Eze

The graph-theoretic based studies employing bipartite network approach mostly focus on surveying the statistical properties of the structure and behavior of the network systems under the domain of complex network analysis. They aim to provide the big-picture-view insights of a networked system by looking into the dynamic interaction and relationship among the vertices. Nonetheless, incorporating the features of individual vertex and capturing the dynamic interaction of the heterogeneous local rules governing each of them in the studies is lacking. The methodology in achieving this could hardly be found. Consequently, this study intends to propose a methodology framework that considers the influence of heterogeneous features of each node to the overall network behavior in modeling real-world bipartite network system. The proposed framework consists of three main stages with principal processes detailed in each stage, and three libraries of techniques to guide the modeling activities. It is iterative and process-oriented in nature and allows future network expansion. Two case studies from the domain of communicable disease in epidemiology and habitat suitability in ecology employing this framework are also presented. The results obtained suggest that the methodology could serve as a generic framework in advancing the current state of the art of bipartite network approach.

Graphical abstract:

在复杂网络分析领域中,基于图论的二部网络研究主要是研究网络系统的结构和行为的统计性质。他们的目标是通过观察顶点之间的动态交互和关系来提供网络系统的全局视图。然而,目前的研究缺乏将单个顶点的特征结合起来,并捕捉控制每个顶点的异质局部规则之间的动态相互作用。很难找到实现这一目标的方法。因此,本研究拟提出一种方法框架,在建模现实世界的二部网络系统时考虑每个节点的异构特征对整体网络行为的影响。提出的框架由三个主要阶段组成,每个阶段都有详细的主要过程,以及三个指导建模活动的技术库。它本质上是迭代和面向过程的,并允许未来的网络扩展。还介绍了采用这一框架的传染病流行病学领域和生态学生境适宜性领域的两个案例研究。所获得的结果表明,该方法可以作为一个通用框架,在推进当前状态的艺术二部网络方法。图形化的简介:
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引用次数: 2
BuB: a builder-booster model for link prediction on knowledge graphs. BuB:一个用于知识图上链接预测的生成器-助推器模型。
IF 1.3 Q3 COMPUTER SCIENCE, THEORY & METHODS Pub Date : 2023-01-01 Epub Date: 2023-05-23 DOI: 10.1007/s41109-023-00549-4
Mohammad Ali Soltanshahi, Babak Teimourpour, Hadi Zare

Link prediction (LP) has many applications in various fields. Much research has been carried out on the LP field, and one of the most critical problems in LP models is handling one-to-many and many-to-many relationships. To the best of our knowledge, there is no research on discriminative fine-tuning (DFT). DFT means having different learning rates for every parts of the model. We introduce the BuB model, which has two parts: relationship Builder and Relationship Booster. Relationship Builder is responsible for building the relationship, and Relationship Booster is responsible for strengthening the relationship. By writing the ranking function in polar coordinates and using the nth root, our proposed method provides solutions for handling one-to-many and many-to-many relationships and increases the optimal solutions space. We try to increase the importance of the Builder part by controlling the learning rate using the DFT concept. The experimental results show that the proposed method outperforms state-of-the-art methods on benchmark datasets.

链路预测(LP)在各个领域有许多应用。在LP领域已经进行了大量的研究,LP模型中最关键的问题之一是处理一对多和多对多关系。据我们所知,目前还没有关于判别微调(DFT)的研究。DFT意味着对模型的每个部分都有不同的学习率。我们介绍了BuB模型,它包括两个部分:关系生成器和关系助推器。关系构建者负责建立关系,关系助推器负责加强关系。通过在极坐标中编写排序函数并使用第n根,我们提出的方法提供了处理一对多和多对多关系的解决方案,并增加了最优解空间。我们试图通过使用DFT概念控制学习率来增加生成器部分的重要性。实验结果表明,该方法在基准数据集上的性能优于现有技术。
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引用次数: 0
Surrogate explanations for role discovery on graphs. 图上角色发现的代理解释。
IF 2.2 Q3 COMPUTER SCIENCE, THEORY & METHODS Pub Date : 2023-01-01 Epub Date: 2023-05-26 DOI: 10.1007/s41109-023-00551-w
Eoghan Cunningham, Derek Greene

Role discovery is the task of dividing the set of nodes on a graph into classes of structurally similar roles. Modern strategies for role discovery typically rely on graph embedding techniques, which are capable of recognising complex graph structures when reducing nodes to dense vector representations. However, when working with large, real-world networks, it is difficult to interpret or validate a set of roles identified according to these methods. In this work, motivated by advancements in the field of explainable artificial intelligence, we propose surrogate explanation for role discovery, a new framework for interpreting role assignments on large graphs using small subgraph structures known as graphlets. We demonstrate our framework on a small synthetic graph with prescribed structure, before applying them to a larger real-world network. In the second case, a large, multidisciplinary citation network, we successfully identify a number of important citation patterns or structures which reflect interdisciplinary research.

角色发现是将图上的节点集划分为结构相似的角色类的任务。现代角色发现策略通常依赖于图嵌入技术,该技术能够在将节点简化为密集向量表示时识别复杂的图结构。然而,当使用大型真实世界网络时,很难解释或验证根据这些方法确定的一组角色。在这项工作中,受可解释人工智能领域进步的推动,我们提出了角色发现的替代解释,这是一种使用称为graphlets的小子图结构来解释大型图上角色分配的新框架。我们在一个具有规定结构的小合成图上演示了我们的框架,然后将其应用于更大的真实世界网络。在第二个案例中,一个大型的多学科引文网络,我们成功地确定了一些反映跨学科研究的重要引文模式或结构。
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引用次数: 0
Integrated twitter analysis to distinguish systems thinkers at various levels: a case study of COVID-19. 综合推特分析以区分不同层次的系统思考者:以COVID-19为例。
IF 2.2 Q3 COMPUTER SCIENCE, THEORY & METHODS Pub Date : 2023-01-01 DOI: 10.1007/s41109-022-00520-9
Harun Pirim, Morteza Nagahi, Oumaima Larif, Mohammad Nagahisarchoghaei, Raed Jaradat

Systems Thinking (ST) has become essential for practitioners and experts when dealing with turbulent and complex environments. Twitter medium harbors social capital including systems thinkers, however there are limited studies available in the extant literature that investigate how experts' systems thinking skills, if possible at all, can be revealed within Twitter analysis. This study aims to reveal systems thinking levels of experts from their Twitter accounts represented as a network. Unraveling of latent Twitter network clusters ensues the centrality analysis of their follower networks inferred in terms of systems thinking dimensions. COVID-19 emerges as a relevant case study to investigate the relationship between COVID-19 experts' Twitter network and their systems thinking capabilities. A sample of 55 trusted expert Twitter accounts related to COVID-19 has been selected for the current study based on the lists from Forbes, Fortune, and Bustle. The Twitter network has been constructed based on the features extracted from their Twitter accounts. Community detection reveals three distinct groups of experts. In order to relate system thinking qualities to each group, systems thinking dimensions are matched with the follower network characteristics such as node-level metrics and centrality measures including degree, betweenness, closeness and Eigen centrality. Comparison of the 55 expert follower network characteristics elucidates three clusters with significant differences in centrality scores and node-level metrics. The clusters with a higher, medium, lower scores can be classified as Twitter accounts of Holistic thinkers, Middle thinkers, and Reductionist thinkers, respectfully. In conclusion, systems thinking capabilities are traced through unique network patterns in relation to the follower network characteristics associated with systems thinking dimensions.

系统思维(ST)已经成为从业者和专家在处理动荡和复杂的环境时必不可少的。Twitter媒体拥有包括系统思考者在内的社会资本,然而,在现有文献中,调查专家的系统思维技能(如果可能的话)如何在Twitter分析中揭示的研究有限。这项研究旨在揭示专家的系统思维水平,从他们的Twitter账户代表一个网络。潜在的推特网络集群的揭示,随之而来的是对其追随者网络的中心性分析,从系统思维维度推断。COVID-19作为一个相关的案例研究出现,以调查COVID-19专家的Twitter网络与他们的系统思维能力之间的关系。根据《福布斯》、《财富》和《Bustle》的榜单,我们选择了55个与COVID-19相关的值得信赖的专家Twitter账户作为当前研究的样本。Twitter网络是基于从他们的Twitter账户中提取的特征构建的。社区检测揭示了三组不同的专家。为了将系统思维质量与每个群体联系起来,系统思维维度与追随者网络特征相匹配,如节点级度量和中心性度量,包括程度、中间性、亲密性和特征中心性。55个专家追随者网络特征的比较阐明了三个集群在中心性得分和节点级指标方面存在显著差异。得分较高、中等和较低的集群可以分别被分类为整体思考者、中间思考者和还原论思考者的Twitter账户。总之,系统思维能力是通过与系统思维维度相关的追随者网络特征相关的独特网络模式来追踪的。
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引用次数: 0
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Applied Network Science
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