Generalization Bounds and Representation Learning for Estimation of Potential Outcomes and Causal Effects

被引:0
作者
Johansson, Fredrik D. [1 ]
Shalit, Uri [2 ]
Kallus, Nathan [3 ]
Sontag, David [4 ]
机构
[1] Chalmers Univ Technol, S-41296 Gothenburg, Sweden
[2] Technion Israel Inst Technol, IL-3200003 Haifa, Israel
[3] Cornell Univ, New York, NY 10044 USA
[4] MIT, 77 Massachusetts Ave, Cambridge, MA 02139 USA
关键词
Causal effects; overlap; generalization theory; domain adaptation; PROPENSITY SCORE; INFERENCE; SELECTION;
D O I
暂无
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Practitioners in diverse fields such as healthcare, economics and education are eager to apply machine learning to improve decision making. The cost and impracticality of per-forming experiments and a recent monumental increase in electronic record keeping has brought attention to the problem of evaluating decisions based on non-experimental ob-servational data. This is the setting of this work. In particular, we study estimation of individual-level potential outcomes and causal effects-such as a single patient's response to alternative medication-from recorded contexts, decisions and outcomes. We give gen-eralization bounds on the error in estimated outcomes based on distributional distance measures between re-weighted samples of groups receiving different treatments. We pro-vide conditions under which our bounds are tight and show how they relate to results for unsupervised domain adaptation. Led by our theoretical results, we devise algorithms which learn representations and weighting functions that minimize our bounds by regularizing the representation's induced treatment group distance, and encourage sharing of information between treatment groups. Finally, an experimental evaluation on real and synthetic data shows the value of our proposed representation architecture and regularization scheme.
引用
收藏
页数:50
相关论文
共 108 条
[1]   Matching on the Estimated Propensity Score [J].
Abadie, Alberto ;
Imbens, Guido W. .
ECONOMETRICA, 2016, 84 (02) :781-807
[2]   Estimating Conditional Average Treatment Effects [J].
Abrevaya, Jason ;
Hsu, Yu-Chin ;
Lieli, Robert P. .
JOURNAL OF BUSINESS & ECONOMIC STATISTICS, 2015, 33 (04) :485-505
[3]  
Alaa AM, 2018, PR MACH LEARN RES, V80
[4]  
Amos B, 2017, PR MACH LEARN RES, V70
[5]  
[Anonymous], 1998, N Y
[6]  
Anthony M., 2009, Neural Network Learning: Theoretical Foundations
[7]  
Arjovsky M, 2017, PR MACH LEARN RES, V70
[8]   Recursive partitioning for heterogeneous causal effects [J].
Athey, Susan ;
Imbens, Guido .
PROCEEDINGS OF THE NATIONAL ACADEMY OF SCIENCES OF THE UNITED STATES OF AMERICA, 2016, 113 (27) :7353-7360
[9]  
Athey Susan, 2016, CAUSALTREE
[10]   An Introduction to Propensity Score Methods for Reducing the Effects of Confounding in Observational Studies [J].
Austin, Peter C. .
MULTIVARIATE BEHAVIORAL RESEARCH, 2011, 46 (03) :399-424