This paper discusses some procedures developed in recent work in machine learning for inferring causal direction from observational data. The role of independence and invariance assumptions is emphasized. Several familiar examples, including Hempel's flagpole, problem are explored in the light of these ideas. The framework is then applied to problems having to do with explanatory direction in non-causal explanation.
CITATION STYLE
Woodward, J. (2022). Flagpoles anyone? Causal and explanatory asymmetries. Theoria (Spain), 37(1), 7–52. https://doi.org/10.1387/theoria.21921
Mendeley helps you to discover research relevant for your work.