experimental design for causal inference
Experimental design for causal inference is a systematic approach that aims to establish cause-and-effect relationships between variables by manipulating one or more variables and observing their impact on the outcome, while controlling for other factors.
Requires login.
Related Concepts (1)
Similar Concepts
- bayesian inference in causal models
- causal inference
- causal inference and causal relationships
- causal inference in aspect experiments
- causal inference methods
- causal inferences
- experimental conditions
- experimental control and internal validity
- experimental design
- experimental designs
- experimental research
- identification of causal effects
- model selection in causal inference
- quasi-experimental design
- quasi-experimental designs