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Treatment-on-the-Treated (TOT) Effect
The Treatment-on-the-Treated (TOT) effect, also called the average treatment effect on the treated (ATET), is the average causal effect of actually receiving the treatment among the subpopulation that took it up. Under one-sided non-compliance (no-shows) with random assignment to treatment , Bloom (1984) shows it can be estimated as , i.e., the ITT scaled by the compliance rate. With two-sided non-compliance and a monotonicity assumption, this is generalized to the Local Average Treatment Effect (LATE) among compliers (Imbens & Angrist, 1994).
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Data Science
Research Paper: Advanced Prompting
Science
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Turing Test
Causal Inference References
The calculus of causation
Ladder of Causation
Bayes Theorem Overview
From objectivity to subjectivity
Stages of Casual Inference: Induction and Deduction
Reasoning
Hill's Criteria
Three different kinds of causation
The Two Fundamental Laws of Causal Inference
Randomized Controlled Trial (RCT) = Controlled Experiment
Approximate Inference
Estimand
Three Critical Choices in Causal Inference
Correlation vs. Causation
The Challenge of Establishing Causality in Economics
Instrumental Variables Estimation
Encouragement Design (Randomized Encouragement)
Heteroskedasticity-Consistent (HC) Standard Errors
Intent-to-Treat (ITT) Effect
Treatment-on-the-Treated (TOT) Effect
Intent-to-Treat vs. Treatment-on-the-Treated (Compliance-Adjusted Effects)