Dear friends in causality research
In the past 5 months, since the publication of The Book of
Why http://bayes.cs.ucla.edu/WHY/ I have been involved in
conversations with many inquisitive readers on twitter @yudapearl
and have not been able to update our blog as frequently as
I should. I am glad to return to this forum and update it with
the major developments since July, 2018.

1. 
Initial reviews of the Book of Why
are posted on its trailer page http://bayes.cs.ucla.edu/WHY/
They vary from technical discussions to philosophical
speculations, from relationships to machine learning
to debates about the supremacy of randomized contolled trials.
 
2.
A search-able file of all my 750 tweets is available here:
here https://ucla.in/2Kz0FoY. It can be used for (1) extracting 
talking points, adages and arguments in the defense
of causal inference, and (2) understanding the thinking
of neighboring cultures, e.g., statistics, epidemiology,
economics, deep learning and reinforcement learning, primarily on 
issues of transparency, testability, manipulability, 
do-expressions and counterfactuals.

3.
The 6th printing of the Book of why is now
available, with corrections to all 
errors and typos discovered up to Oct. 29, 2018.
To check that you have the latest printing, make sure the
last line on the copywright page ends with ... 8 7 6   

4.
Please examine the latest papers and
reports from our brewry:

R-484 Pearl, "Causal and Counterfactual Inference,"
      Forthcoming section in The Handbook of Rationality, MIT press. 
      https://ucla.in/2Iz9myt

R-484 Pearl, "A note on oxygen, matches and fires,"
      On Non-manipulable Causes," September 2018. 
      https://ucla.in/2Qb1h6v

R-483 Pearl, "Does Obesity Shorten Life? Or is it the Soda? 
      On Non-manipulable Causes," https://ucla.in/2EpxcNU
      Journal of Causal Inference, 6(2), online, September 2018.

R-481 Pearl, "The Seven Tools of Causal Inference
      with Reflections on Machine Learning," July 2018 
      https://ucla.in/2umzd65
      Forthcoming, Communications of ACM.

R-479 Cinelli and Pearl, "On the utility of causal diagrams in 
      modeling attrition: a practical example," April 2018. 
      https://ucla.in/2L8KAWw
      Forthcoming, Journal of Epidemiology.

R-478 Pearl and Bareinboim, "A note on `Generalizability of Study 
      Results'," April 2018. Forthcoming, Journal of Epidemiology. 
https://ucla.in/2NIsI6B

Earlier papers can be found here
http://bayes.cs.ucla.edu/csl_papers.html

5.
I wish in particular to call attention to the
introduction of R-478, https://ucla.in/2NIsI6B.
It provides a "three bulltets" recipe for comparing
the structural and potential outcome frameworks:

*  To determine if there exist sets of covariates $W$ that
satisfy ``conditional exchangeability'' 
** To estimate causal parameters at the target population
in cases where such sets $W$ do not exist, and
*** To decide if one's modeling assumptions are compatible with the
available data.

I have listed the "three bullets" above in the hope that
they serve to facilitate and concretize future conversations
with our neighbors from the potential outcome framework.

6. We are informed of a most relevant workshop: 
AAAI-WHY 2019, March 26-27, Stanford, CA
The 2019 AAAI Spring Symposium will host a new workshop: 
Beyond Curve Fitting: Causation, Counterfactuals, and
Imagination-based AI. See https://why19.causalai.net
Submissions due December 17, 2018

Greetings and Happy Holidays
Judea



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