Causal Inference Methods: Lessons from Applied Microeconomics

被引:23
|
作者
Dague, Laura [1 ]
Lahey, Joanna [1 ]
机构
[1] Texas A&M Univ, College Stn, TX 77843 USA
关键词
REGRESSION DISCONTINUITY DESIGN; INSTRUMENTAL VARIABLES ESTIMATION; ALCOHOL-CONSUMPTION; TRAINING-PROGRAMS; HEALTH-INSURANCE; FIELD EXPERIMENT; PERFORMANCE; EMPLOYMENT; DIFFERENCE; INCREASE;
D O I
10.1093/jopart/muy067
中图分类号
D0 [政治学、政治理论];
学科分类号
0302 ; 030201 ;
摘要
This article discusses causal inference techniques for social scientists through the lens of applied microeconomics. We frame causal inference using the standard of the ideal experiment, emphasizing problems of omitted variable bias and reverse causality. We explore how laboratory and field experiments can succeed and fail to meet this ideal in practice. We then outline how different methods and the statistical assumptions behind them can lead to causal inference in nonexperimental contexts. We explain when problems with omitted variable bias can and cannot be addressed using observed controls. We consider tools for studying natural experiments, including difference-in-differences, instrumental variables, and regression discontinuity techniques. Finally, we discuss additional concerns that may arise such as weighting, clustering, multiple inference, and external validity. We include Stata code for implementing each of these methods as well as a series of checklists for researchers detailing important robustness and design checks. Throughout, we emphasize the importance of understanding the context of a study and implementing analyses in a way that acknowledges strengths and limitations.
引用
收藏
页码:511 / 529
页数:19
相关论文
共 50 条
  • [31] MIXTURE MODELING METHODS FOR CAUSAL INFERENCE WITH MULTILEVEL DATA
    Kim, Jee-Seon
    Steiner, Peter M.
    Lim, Wen-Chiang
    [J]. ADVANCES IN MULTILEVEL MODELING FOR EDUCATIONAL RESEARCH: ADDRESSING PRACTICAL ISSUES FOUND IN REAL-WORLD APPLICATIONS, 2016, : 335 - 359
  • [32] Evaluating Uses of Deep Learning Methods for Causal Inference
    Whata, Albert
    Chimedza, Charles
    [J]. IEEE ACCESS, 2022, 10 : 2813 - 2827
  • [33] Causal Inference Methods and their Challenges: The Case of 311 Data
    Yusuf, Farzana Beente
    Cheng, Shaoming
    Ganapati, Sukumar
    Narasimhan, Giri
    [J]. PROCEEDINGS OF THE 22ND ANNUAL INTERNATIONAL CONFERENCE ON DIGITAL GOVERNMENT RESEARCH, DGO 2021, 2021, : 49 - 59
  • [34] ASSESSING STATISTICAL METHODS FOR CAUSAL INFERENCE IN OBSERVATIONAL DATA
    Parks, D. C.
    Lin, X.
    Lee, K. R.
    [J]. VALUE IN HEALTH, 2014, 17 (07) : A731 - A731
  • [35] Comment: Strengthening Empirical Evaluation of Causal Inference Methods
    Jensen, David
    [J]. STATISTICAL SCIENCE, 2019, 34 (01) : 77 - 81
  • [36] Applying Causal Inference Methods in Psychiatric Epidemiology: A Review
    Ohlsson, Henrik
    Kendler, Kenneth S.
    [J]. JAMA PSYCHIATRY, 2020, 77 (06) : 637 - 644
  • [37] A Theory of Statistical Inference for Matching Methods in Causal Research
    Iacus, Stefano M.
    King, Gary
    Porro, Giuseppe
    [J]. POLITICAL ANALYSIS, 2019, 27 (01) : 46 - 68
  • [38] Counterfactuals and Causal Inference: Methods and Principles for Social Research
    Fox, John
    [J]. CANADIAN JOURNAL OF SOCIOLOGY-CAHIERS CANADIENS DE SOCIOLOGIE, 2008, 33 (02): : 432 - 435
  • [39] Counterfactuals and causal inference: Methods and principles for social research
    Hipp, John R.
    [J]. CONTEMPORARY SOCIOLOGY-A JOURNAL OF REVIEWS, 2008, 37 (04) : 320 - 322
  • [40] Causal Inference Methods to Integrate Omics and Complex Traits
    Porcu, Eleonora
    Sjaarda, Jennifer
    Lepik, Kaido
    Carmeli, Cristian
    Darrous, Liza
    Sulc, Jonathan
    Mounier, Ninon
    Kutalik, Zoltan
    [J]. COLD SPRING HARBOR PERSPECTIVES IN MEDICINE, 2021, 11 (05): : NA