Improving causal inferences in risk analysis.

@article{Cox2013ImprovingCI,
  title={Improving causal inferences in risk analysis.},
  author={Louis Anthony Cox},
  journal={Risk analysis : an official publication of the Society for Risk Analysis},
  year={2013},
  volume={33 10},
  pages={
          1762-71
        }
}
  • L. A. Cox
  • Published 1 October 2013
  • Psychology
  • Risk analysis : an official publication of the Society for Risk Analysis
Recent headlines and scientific articles projecting significant human health benefits from changes in exposures too often depend on unvalidated subjective expert judgments and modeling assumptions, especially about the causal interpretation of statistical associations. Some of these assessments are demonstrably biased toward false positives and inflated effects estimates. More objective, data-driven methods of causal analysis are available to risk analysts. These can help to reduce bias and… 

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