Estimating causal effects from panel data with dynamic multivariate panel models

IF 3.4 2区 社会学 Q1 Medicine
Jouni Helske , Santtu Tikka
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引用次数: 0

Abstract

Panel data are ubiquitous in scientific fields such as social sciences. Various modeling approaches have been presented for observational causal inference based on such data. Existing approaches typically impose restrictive assumptions on the data-generating process such as Gaussian responses or time-invariant effects, or they can only consider short-term causal effects. To surmount these restrictions, we present the dynamic multivariate panel model (DMPM) that supports time-varying, time-invariant, and individual-specific effects, multiple responses across a wide variety of distributions, and arbitrary dependency structures of lagged responses of any order. We formally demonstrate how DMPM facilitates causal inference within the structural causal modeling framework and we take a Bayesian approach for the estimation of the posterior distributions of the model parameters and causal effects of interest. We demonstrate the use of DMPM by applying the approach to both real and synthetic data.

用动态多变量面板模型估算面板数据的因果效应
在社会科学等科学领域,面板数据无处不在。针对基于此类数据的观察性因果推断,人们提出了各种建模方法。现有方法通常对数据生成过程施加限制性假设,如高斯响应或时间不变效应,或者只能考虑短期因果效应。为了克服这些限制,我们提出了动态多变量面板模型(DMPM),该模型支持时变、时不变和特定个体效应、多种分布的多重响应以及任意阶滞后响应的任意依赖结构。我们正式演示了 DMPM 如何在结构因果建模框架内促进因果推断,并采用贝叶斯方法估计模型参数和相关因果效应的后验分布。我们将 DMPM 应用于真实数据和合成数据,展示了它的用途。
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来源期刊
Advances in Life Course Research
Advances in Life Course Research SOCIAL SCIENCES, INTERDISCIPLINARY-
CiteScore
6.10
自引率
2.90%
发文量
41
期刊介绍: Advances in Life Course Research publishes articles dealing with various aspects of the human life course. Seeing life course research as an essentially interdisciplinary field of study, it invites and welcomes contributions from anthropology, biosocial science, demography, epidemiology and statistics, gerontology, economics, management and organisation science, policy studies, psychology, research methodology and sociology. Original empirical analyses, theoretical contributions, methodological studies and reviews accessible to a broad set of readers are welcome.
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