揭示多维贫困的因果机制。

IF 3 4区 社会学 Q1 SOCIAL SCIENCES, INTERDISCIPLINARY Evaluation Review Pub Date : 2023-12-01 Epub Date: 2022-11-24 DOI:10.1177/0193841X221140936
Hernando Grueso
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引用次数: 2

摘要

尽管从可持续发展目标的角度来看,发展干预措施的设计有所改进,但仍然缺乏能够估计这些干预措施对多种相互关联的结果的影响的评估方法。本文提出了一个国际发展中复杂因果推理的方法框架,该框架结合了机器学习和因果推理的计量经济学设计。作为一个研究案例,哥伦比亚的多层面贫困与暴力之间的关系是根据这一框架进行评估的。首先,贝叶斯网络(BN)用于创建一个有向无环图(DAG),该图能够预测多维贫困成分如何相互关联并受到暴力指标的影响。其次,DAG输出用于确定工具变量(IV),以测试多维贫困对家庭成为暴力受害者可能性的影响。从用水、污水处理系统的连接以及墙壁和地板的质量等方面衡量的最低生活水平是贫困的教育和健康方面的有力预测因素。使用2SLS,结果显示,一个家庭中有一个文盲会使该家庭成为暴力受害者的可能性增加0.4%。BN有可能预测复杂的因果模式,有助于了解发展干预措施对贫困等多层面结果的影响。然后可以使用准实验计量经济学设计来测试这些预测的因果关系中的一些。
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Unveiling the Causal Mechanisms Within Multidimensional Poverty.

Despite improvements in the design of development interventions from the perspective of the Sustainable Development Goals (SDGs), there is still a lack of evaluation methods able to estimate the impact of these interventions on multiple and interrelated outcomes. This paper proposes a methodological framework for complex causal inference in international development that combines machine learning and econometric designs for causal inference. As a study case, the relationship between multidimensional poverty and violence in Colombia is evaluated following this framework. First, Bayesian networks (BN) are used to create a directed acyclic graph (DAG) able to predict how multidimensional poverty components are interrelated and affected by a violence indicator. Second, the DAG output is used to identify instrumental variables (IV) in order to test the effect of multidimensional poverty on a household's likelihood to be a victim of violence. Minimum living standards-measured in terms of access to water, connection to the sewage system, and the quality of walls and floors-are strong predictors of the education and health dimensions of poverty. Using 2SLS, the results show that having an illiterate person within a household increases by 0.4% the household's likelihood to be a victim of violence. BNs have the potential to predict complex causal patterns helping to understand the effect of development interventions on multidimensional outcomes such as poverty. Quasi-experimental econometric designs can then be used to test some of these predicted causal connections.

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来源期刊
Evaluation Review
Evaluation Review SOCIAL SCIENCES, INTERDISCIPLINARY-
CiteScore
2.90
自引率
11.10%
发文量
80
期刊介绍: Evaluation Review is the forum for researchers, planners, and policy makers engaged in the development, implementation, and utilization of studies aimed at the betterment of the human condition. The Editors invite submission of papers reporting the findings of evaluation studies in such fields as child development, health, education, income security, manpower, mental health, criminal justice, and the physical and social environments. In addition, Evaluation Review will contain articles on methodological developments, discussions of the state of the art, and commentaries on issues related to the application of research results. Special features will include periodic review essays, "research briefs", and "craft reports".
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