Causal Inference through a Witness Protection Program
نویسندگان
چکیده
One of the most fundamental problems in causal inference is the estimation of a causal effect when treatment and outcome are confounded. This is difficult in an observational study, because one has no direct evidence that all confounders have been adjusted for. We introduce a novel approach for estimating causal effects that exploits observational conditional independencies to suggest “weak” paths in an unknown causal graph. The widely used faithfulness condition of Spirtes et al. is relaxed to allow for varying degrees of “path cancellations” that imply conditional independencies but do not rule out the existence of confounding causal paths. The output is a posterior distribution over bounds on the average causal effect via a linear programming approach and Bayesian inference. We claim this approach should be used in regular practice as a complement to other tools in observational studies.
منابع مشابه
Randomization Inference and Sensitivity Analysis for Composite Null Hypotheses with Binary Outcomes in Matched Observational Studies To appear in the Journal of the American Statistical Association: Theory and Methods
We present methods for conducting hypothesis testing and sensitivity analyses for composite null hypotheses in matched observational studies when outcomes are binary. Causal estimands discussed include the causal risk difference, causal risk ratio, and the effect ratio. We show that inference under the assumption of no unmeasured confounding can be performed by solving an integer linear program...
متن کاملFinding the Cause: Examining the Role of Qualitative Causal Inference through Categorical Judgments
Previous work showed that people‟s causal judgments are modeled better as estimates of the probability that a causal relationship exists (a qualitative inference) than as estimates of the strength of that relationship (a quantitative inference). Here, using a novel task, we present experimental evidence in support of the importance of qualitative causal inference. Our findings cannot be explain...
متن کاملZaliQL: A SQL-Based Framework for Drawing Causal Inference from Big Data
Causal inference from observational data is a subject of active research and development in statistics and computer science. Many toolkits have been developed for this purpose that depends on statistical software. However, these toolkits do not scale to large datasets. In this paper we describe a suite of techniques for expressing causal inference tasks from observational data in SQL. This suit...
متن کاملEpidemiological Evidence as a Basis for Causation: Implications for Suspected Pesticide-Induced Cancer
"In protecting health, absolute proof comes too late. To wait is to invite disaster or to prolong suffering unnecessarily." 1 This ominous sentiment echoes the concern of many consumers who perceive the en vironment as increasingly dangerous. Fueling that fear is mounting ep idemiologicaF evidence suggesting a strong correlation between pesti cide3 exposure and human cancer. In response, a d...
متن کامل