Data-Driven Variable Decomposition for Treatment Effect Estimation

IEEE Transactions on Knowledge and Data Engineering(2022)

引用 17|浏览511
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摘要
Causal Inference plays an important role in decision making in many fields, such as social marketing, healthcare, and public policy. One fundamental problem in causal inference is the treatment effect estimation in observational studies when variables are confounded. Controlling for confounding effects is generally handled by propensity score. But it treats all observed variables as confounders an...
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关键词
Estimation,Drugs,Biological system modeling,Inference algorithms,Advertising,Computer science
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