We address the problem that occurs when inferences about counterfactuals -- predictions, "what if" questions, and causal effects -- are attempted far from the available data. The danger of these extreme counterfactuals is that substantive conclusions drawn from statistical models that fit the data well turn out to be based largely on speculation hidden in convenient modeling assumptions that few would be willing to defend. Yet existing statistical strategies provide few reliable means of identifying extreme counterfactuals. We offer a proof that inferences farther from the data are more model-dependent, and then develop easy-to-apply methods to evaluate how model-dependent our answers would be to specified counterfactuals. These methods req...
Fixed effects estimators are frequently used to limit selection bias. For example, it is well-known ...
In this paper, we present statistical simulation techniques of interest in substantial interpretatio...
Counterfactual prediction methods are required when a model will be deployed in a setting where trea...
Inferences about counterfactuals are essential for prediction, answering "what if" questions, and es...
Inferences about counterfactuals are essential for prediction, answering “what if” questions, and es...
In response to the data-based measures of model dependence proposed in King and Zeng (2006), Sambani...
Inferences about counterfactuals are essential for prediction, answering "what if" questions, and es...
We evaluate two diagnostic tools used to determine if counterfactual analysis requires extrapolation...
In response to the data-based measures of model dependence proposed in King and Zeng (2006), Sambani...
Although published works rarely include causal estimates from more than a few model specifications, ...
International audiencePost-hoc interpretability approaches have been proven to be powerful tools to ...
Abstract Background The counterfactual or potential outcome model has become increasingly standard f...
This paper contributes to the debate on the virtues and vices of counterfactuals as a basis for caus...
Counterfactuals are a hot topic in economics today, at least among economists concerned with methodo...
Statistical inference often fails to replicate. One reason is that many results may be selected for ...
Fixed effects estimators are frequently used to limit selection bias. For example, it is well-known ...
In this paper, we present statistical simulation techniques of interest in substantial interpretatio...
Counterfactual prediction methods are required when a model will be deployed in a setting where trea...
Inferences about counterfactuals are essential for prediction, answering "what if" questions, and es...
Inferences about counterfactuals are essential for prediction, answering “what if” questions, and es...
In response to the data-based measures of model dependence proposed in King and Zeng (2006), Sambani...
Inferences about counterfactuals are essential for prediction, answering "what if" questions, and es...
We evaluate two diagnostic tools used to determine if counterfactual analysis requires extrapolation...
In response to the data-based measures of model dependence proposed in King and Zeng (2006), Sambani...
Although published works rarely include causal estimates from more than a few model specifications, ...
International audiencePost-hoc interpretability approaches have been proven to be powerful tools to ...
Abstract Background The counterfactual or potential outcome model has become increasingly standard f...
This paper contributes to the debate on the virtues and vices of counterfactuals as a basis for caus...
Counterfactuals are a hot topic in economics today, at least among economists concerned with methodo...
Statistical inference often fails to replicate. One reason is that many results may be selected for ...
Fixed effects estimators are frequently used to limit selection bias. For example, it is well-known ...
In this paper, we present statistical simulation techniques of interest in substantial interpretatio...
Counterfactual prediction methods are required when a model will be deployed in a setting where trea...