Dear friends in causality research, 
------------------------------------- 
This greeting from UCLA Causality blog 
contains: 
A. News items concerning causality research, 
B. New postings, publications, slides and videos, 
C. Debates, controversies and strange articles,
D. New scientific questions and some answers. 
http://www.mii.ucla.edu/causality/.

1. 
Nominations are invited for the 2nd ASA "Causality in 
Statistical Education" Award. The deadline is April 15, and 
the background information can be viewed here:
http://magazine.amstat.org/blog/2012/11/01/pearl/ 
http://magazine.amstat.org/blog/2013/08/01/causality-in-stat-edu/.

Nominations and questions should be sent to the ASA office at 
<[email protected]>.  
Visit http://www.amstat.org/education/causalityprize/ 
for nomination information.

Note: This year, the Award carries a $10,000 prize, which
may be split into two $5,000 prizes.

2.  Journal of Causal Inference - Vol. 2, Issue  1
------------------------------------------------- 
The third issue of the Journal of Causal Inference is 
on its way, and a posting date has been set for 
April 15th, 2014. The table of content can be viewed
here: huup://tiny.cc/jci_2_1 , while the
first two issues are here: 
http://www.degruyter.com/view/j/jci 
(click on READ CONTENT, under the cover picture)

As always, submissions are welcome on all aspects 
of causal analysis, especially those deemed heretical. 

3. Causality book - 2nd Edition, 3rd printing, 
------------------------------ 
Many have been asking how to ensure that the copy they
get is the latest, and not some earlier printing of Causality
(2009).  The trick is to examine the copyright page 
and make sure it says: "Reprinted with corrections 2013"
Again, if you have an older printing and do not wish to 
buy another copy, all changes are marked in red here: 
http://bayes.cs.ucla.edu/BOOK-09/causality2-errata-updated7_3_13.pdf 

4. Causality is Dead
--------------------
If we thought that Bertrand Russell's dismissal of causality 
as "a relic of a bygone age" was a passing episode -- we were 
wrong.  Danny Hillis has a new essay nominating
causality as the one scientific tenet that ought to be discarded.
http://www.edge.org/response-detail/25435
His bottom line: "We will come to appreciate that
causes and effects do not exist in nature, that they are just
convenient creations of our own minds."

I for one would rather explore
the cognitive and computational advantages of these
"convenient creations" than speculate on their non-existence
in nature (see Causality page 419-420).
The same goes for "free will", "explanation", 
"responsibility" "agency", "credit and blame" and other 
convenient creations that make up what we call "the 
understanding."

5. Causality is Alive
-----------------------
Contrasting Hillis non-existence theory, we were
delighted last month to get an existence proof from 
DARPA (Defence Advanced Research Projects Agency), 
announcing a new research program entitled
Big Mechanism, or, Big Mechanism Seeks the "Whys" Hidden in
Big Data"
http://www.darpa.mil/NewsEvents/Releases/2014/02/20.aspx=20
In a nut shell, this program aims
to "leapfrog state-of-the-art big data analytics by developing 
automated technologies to help explain the causes and effects 
that drive complicated systems." At the end of the announcement
we read a familiar and visionary prediction: "By emphasizing
causal models and explanation, Big Mechanism may be the
future of science."
I dont think many on this list would object to this
prediction, though we are perhaps in the best position
to appreciate the difficulties.
 
6. Simpson's paradox, a new debate
-----------------------------------
A lively debate on Simpson's paradox broke out again
last month on Andrew Gelman's blog (95 comments), 
http://andrewgelman.com/2014/02/09/keli-liu-xiao-li-meng-simpsons-paradox/ 
triggered by four papers on the subject published in 
The American Statistician (February, 2014).
The debate raged among three camps.
a) Those who think Simpson's paradox occurs when
"regression coefficients change if you add more predictors,"
Therefore, no causality is needed, except that some regressors
are "somehow wrong" and others are somehow right.
b) Those who think that "peeling away the paradox is as 
easy (or hard) as avoiding a comparison of apples and oranges, 
a concept requiring no mention of causality."
c) Those (including this writer) who believe that
intuitive notions such as "somehow wrong" and "apples and oranges"
emanate from the causal structure of the story
behind the data and, therefore, are all derivable mechanically
from the causal graph. See
http://ftp.cs.ucla.edu/pub/stat_ser/r414.pdf
http://ftp.cs.ucla.edu/pub/stat_ser/R264.pdf

As an aside, Johannes Textor informs me that the
Simpson's machine described in r414.pdf is now
available on http://dagitty.net/learn/simpson/
for users to play with for fun and profit.
Enjoy


7. Who is a Bayesian?
--------------------------- 
Another lively debate (105 comments) addressed
the 250 year old question: "Who is a Bayesian?"
http://andrewgelman.com/2014/01/16/22571/ 
Some think that "Bayes is the analysis of subjective beliefs"
and some think that "Bayes is using
Bayes rule", be it with beliefs or with frequencies. 
My own opinion is summarized as:
"Bayes means: (1) using knowledge we possess prior to
obtaining data, (2) encoding such knowledge in the
language of probabilities (3) combining those probabilities
with data and (4) accepting the combined results as a basis 
for decision making and performance evaluation.
More in http://ftp.cs.ucla.edu/pub/stat_ser/r426.pdf
However, my main point was that, rather than arguing about
who deserves the honor of being a "Bayesian," we should
discuss what methods better utilize prior knowledge,
regardless of whether it is encoded as probabilities or
as causal stories. 

8. New slides and videos available 
-------------------------------------- 
* Richard Scheines informed me that slides and videos for
the workshop on graphical causal model search at CMU
(Oct. 2013) are now available at:
http://www.hss.cmu.edu/philosophy/casestudeiesworkshop.php

* Video of a tutorial on "Causes and Counterfactuals" 
presented at NIPS-2013 (by Pearl and Bareinboim) is 
available here: 
http://research.microsoft.com/apps/video/default.aspx?id=206977 

* Video of a lecture presented at Columbia University
Institute for Data Sciences is available here: 
http://idse.columbia.edu/seminarvideo_judeapearl 

* Video of a public lecture presented at NYU-Poly
is available here: 
http://www.livestream.com/poly/video?clipId=pla_b641858e-d11d-4a48-91a3-ff9bd8ead4b6
 

9. New scientific questions and some of their solutions.
-------------------------------- 
There are new postings on our home page 
http://bayes.cs.ucla.edu/csl_papers.html 
that might earn your attention. Among them: 

R-415 "On the Testability of Models with Missing Data"
in which we address the question of whether any data-generating
model can be submitted to statistical test, once data 
are corrupted by missingness. The answer turns out to be
positive, and we present sufficient conditions for testability 
in all three categories: MCAR, MAR and NMAR.
http://ftp.cs.ucla.edu/pub/stat_ser/r415.pdf

R-421 "Reply to Commentary by Imai, Keele, Tingley and
Yamamoto, concerning Causal Mediation Analysis".
It clarifies how Structural Causal Models (SCM)
unify the graphical and potential outcome frameworks, 
and why ignorability-based assumptions require graphical 
interpretations before they can be judged for plausibility.
It also explains why traditional mediation analysts are
so reluctant to adopt modern methods of causal mediation;
I blame habitual addiction to Bayes conditionalization 
for this resistance.
http://ftp.cs.ucla.edu/pub/stat_ser/r421.pdf

R-422 "Is Scientific Knowledge useful for Policy Analysis? 
A Peculiar Theorem says: No"
We ask: Why is it that knowing the effect of smoking
on cancer does not help us assess the merits of
of banning cigarette advertisement.
We speculate on the ramification of this peculiarity
in nonparametric analysis.
http://ftp.cs.ucla.edu/pub/stat_ser/r422.pdf

10.
Wishing you a happy and productive spring,
and may your deeds go for a good cause.
Judea 


-----------------------------------------------
Professor Judea Pearl
Director, Cognitive Systems Laboratory
Room 4514-4515 Boelter Hall
University of California Los Angeles, 
405 Hilgard Avenue
Los Angeles, California 90095-1600

[email protected]
Tel. (310) 825-3243
Fax  (310) 794-5057

http://www.cs.ucla.edu/~judea/
http://bayes.cs.ucla.edu/csl_papers.html

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