Mireia Bolíbar, Julia Martínez-Ariño, Maria Schiller
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引用次数: 0
摘要
我们提出了一种分析和可视化大量个人网络信息的新方法,以揭示我们按类别聚类的聚合行动者之间关系的社会中心结构。类别网络可识别具有特定属性(如 "移民组织")的抽样自我行为者群体与基于属性的抽象群体或改变者类型(如 "任何移民组织")之间的联系。这种方法利用了整体网络和以自我为中心的网络分析方法的优势,因为它既能深入了解背景的整体网络结构,又能将结果推广到更广泛的人群中。该方法可应用于通过职位或资源生成器等工具的修改版获得的数据,这些工具很容易在标准的大 N 代表性调查中收集。我们将该方法具体应用于分析法国和德国 40 个城市中移民组织在地方治理网络中的地位。
Network of Categories: A Method to Aggregate Egocentric Network Survey Data into a Whole Network Structure
We propose a new method for analyzing and visualizing information on a large collection of personal networks to uncover the socio-centric structure of relationships among aggregated actors that we clustered into categories. The network of categories identifies the links between groups of sampled ego actors sharing a given attribute (e.g., “being immigrant organizations”) and abstract attribute-based groups or types of alters (e.g., “any immigrant organization”). This method takes advantage of both whole networks and ego-centered networks analytical approaches since it gains insights into the context’s whole network structure while generalizing the results to a wider population. The method can be applied to data obtained through modified versions of instruments such as position or resource generators, which are easy to collect within standard large- N representative surveys. We present a concrete application of the method to the analysis of immigrant organizations' position in local governance networks in 40 French and German cities.
期刊介绍:
Field Methods (formerly Cultural Anthropology Methods) is devoted to articles about the methods used by field wzorkers in the social and behavioral sciences and humanities for the collection, management, and analysis data about human thought and/or human behavior in the natural world. Articles should focus on innovations and issues in the methods used, rather than on the reporting of research or theoretical/epistemological questions about research. High-quality articles using qualitative and quantitative methods-- from scientific or interpretative traditions-- dealing with data collection and analysis in applied and scholarly research from writers in the social sciences, humanities, and related professions are all welcome in the pages of the journal.