朋友与伙伴利用图形化 LASSO 估算潜在亲缘网络

IF 3.4 1区 社会学 Q1 INTERNATIONAL RELATIONS Journal of Peace Research Pub Date : 2024-11-16 DOI:10.1177/00223433241279377
Andrey Tomashevskiy
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引用次数: 0

摘要

国家间亲和力的概念是国际关系研究的核心:它在研究中发挥着重要作用,因为学者们使用亲和力的测量方法来研究各种背景下的冲突与合作。为了更有效地衡量亲和力,我认为有必要利用多维数据并考虑国际关系的网络背景。在本文中,我提出了深度亲和力的概念,并介绍了一种新算法--三步图式 LASSO(GLASSO)--来推断和恢复潜在的亲和力网络。该技术利用丰富的一元和二元国家级数据来识别国家对之间是否存在亲缘联系。通过直接纳入网络效应并使用各种多维数据输入,我使用三步 GLASSO 估算了国家间的潜在亲缘联系。利用这些数据,我研究了亲和力对国际冲突和外国直接投资的影响,发现三步 GLASSO 生成的亲和力衡量方法优于其他亲和力衡量方法,并且与冲突减少和经济互动增加相关。
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Friends and partners: Estimating latent affinity networks with the graphical LASSO
The notion of affinity among countries is central in studies of international relations: it plays an important role in research as scholars use measures of affinity to study conflict and cooperation in a variety of contexts. To more effectively measure affinity, I argue that it is necessary to utilize multidimensional data and take into account the network context of international relations. In this paper, I develop the deep affinity concept and introduce a new algorithm, the three-step graphical LASSO (GLASSO), to infer and recover latent affinity networks. This technique leverages the abundance of monadic and dyadic state-level data to identify the presence or absence of affinity links between pairs of countries. Directly incorporating network effects and using a variety of multidimensional data inputs, I used the three-step GLASSO to estimate latent affinity links among countries. With these data, I examined the implications of affinity for international conflict and foreign direct investment, and found that the measure of affinity generated with the three-step GLASSO outperformed alternative affinity measures and was associated with decreased conflict and increased economic interaction.
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来源期刊
CiteScore
6.70
自引率
5.60%
发文量
80
期刊介绍: Journal of Peace Research is an interdisciplinary and international peer reviewed bimonthly journal of scholarly work in peace research. Edited at the International Peace Research Institute, Oslo (PRIO), by an international editorial committee, Journal of Peace Research strives for a global focus on conflict and peacemaking. From its establishment in 1964, authors from over 50 countries have published in JPR. The Journal encourages a wide conception of peace, but focuses on the causes of violence and conflict resolution. Without sacrificing the requirements for theoretical rigour and methodological sophistication, articles directed towards ways and means of peace are favoured.
期刊最新文献
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