Causal Inference In The Presence Of Latent Variables And Selection Bias
- Peter Spirtes ,
- Chris Meek ,
- Thomas Richardson
in Proceedings of Eleventh Conference on Uncertainty in Artificial Intelligence, ® Montreal, QU
Published by Morgan Kaufmann | 1995 | Proceedings of Eleventh Conference on Uncertainty in Artificial Intelligence, ® Montreal, QU edition
Whenever the use of non-experimental data for discovering causal relations or predicting the outcomes of experiments or interventions is contemplated, two difficulties are routinely faced. One is the problem of latent variables, or confounders: factors influencing two or more measured variables may not themselves have been measured or recorded. The other is the problem of sample selection bias: values of the variables or features under study may themselves influence whether a unit is included in the data sample.