Using Double Machine Learning to Understand Nonresponse in the Recruitment of a Mixed-Mode Online Panel

IF 3 2区 社会学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Barbara Felderer, J. Kueck, M. Spindler
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引用次数: 0

Abstract

Survey scientists increasingly face the problem of high-dimensionality in their research as digitization makes it much easier to construct high-dimensional (or “big”) data sets through tools such as online surveys and mobile applications. Machine learning methods are able to handle such data, and they have been successfully applied to solve predictive problems. However, in many situations, survey statisticians want to learn about causal relationships to draw conclusions and be able to transfer the findings of one survey to another. Standard machine learning methods provide biased estimates of such relationships. We introduce into survey statistics the double machine learning approach, which gives approximately unbiased estimators of parameters of interest, and show how it can be used to analyze survey nonresponse in a high-dimensional panel setting. The double machine learning approach here assumes unconfoundedness of variables as its identification strategy. In high-dimensional settings, where the number of potential confounders to include in the model is too large, the double machine learning approach secures valid inference by selecting the relevant confounding variables.
利用双机器学习理解混合模式在线招聘中的无响应
随着数字化使得通过在线调查和移动应用程序等工具更容易构建高维(或“大”)数据集,调查科学家在他们的研究中越来越多地面临高维问题。机器学习方法能够处理这样的数据,并且它们已经成功地应用于解决预测问题。然而,在许多情况下,调查统计人员希望了解因果关系以得出结论,并能够将一次调查的结果转移到另一次调查中。标准的机器学习方法对这种关系提供了有偏差的估计。我们将双机器学习方法引入到调查统计中,该方法给出了感兴趣参数的近似无偏估计,并展示了如何使用它来分析高维面板设置中的调查无响应。这里的双机器学习方法假设变量的无混淆性作为其识别策略。在高维设置中,模型中包含的潜在混杂因素的数量太大,双机器学习方法通过选择相关的混杂变量来确保有效的推理。
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来源期刊
Social Science Computer Review
Social Science Computer Review 社会科学-计算机:跨学科应用
CiteScore
9.00
自引率
4.90%
发文量
95
审稿时长
>12 weeks
期刊介绍: Unique Scope Social Science Computer Review is an interdisciplinary journal covering social science instructional and research applications of computing, as well as societal impacts of informational technology. Topics included: artificial intelligence, business, computational social science theory, computer-assisted survey research, computer-based qualitative analysis, computer simulation, economic modeling, electronic modeling, electronic publishing, geographic information systems, instrumentation and research tools, public administration, social impacts of computing and telecommunications, software evaluation, world-wide web resources for social scientists. Interdisciplinary Nature Because the Uses and impacts of computing are interdisciplinary, so is Social Science Computer Review. The journal is of direct relevance to scholars and scientists in a wide variety of disciplines. In its pages you''ll find work in the following areas: sociology, anthropology, political science, economics, psychology, computer literacy, computer applications, and methodology.
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