diff --git a/artificial_intelligence/judea_pearl/README.md b/artificial_intelligence/judea_pearl/README.md index 533e8fa..435226d 100644 --- a/artificial_intelligence/judea_pearl/README.md +++ b/artificial_intelligence/judea_pearl/README.md @@ -6,24 +6,18 @@ > complex probability models, identified conditional independence > relationships as the key organizing principle for uncertain knowledge, > and described an efficient, distributed, exact inference algorithm. -> -- [ACM Turing Award Short Annotated Bibliography][1] [A theory of inferred causation](http://ftp.cs.ucla.edu/pub/stat_ser/r156-reprint.pdf) - with Thomas S. Verma. > Introduces minimal-model semantics as a basis for causal discovery, > and shows that causal directionality can be inferred from patterns > of correlations without resorting to temporal information. -> -- [ACM Turing Award Short Annotated Bibliography][1] [Causal diagrams for empirical research](http://ftp.cs.ucla.edu/pub/stat_ser/R218-B-L.pdf) - extended version linked. > Introduces the theory of causal diagrams and its associated do-calculus; > the first (and still the only) mathematical method to enable a > systematic removal of confounding bias in observations. -> -- [ACM Turing Award Short Annotated Bibliography][1] [The algorithmization of counterfactuals](http://ftp.cs.ucla.edu/pub/stat_ser/r360.pdf) - > Describes a computational model that explains how humans generate, > evaluate and distinguish counterfactual statements so swiftly and > consistently. -> -- [ACM Turing Award Short Annotated Bibliography][1] - -[1]: http://amturing.acm.org/bib/pearl_2658896.cfm