Computing Reviews

The book of why :the new science of cause and effect
Pearl J., Mackenzie D., Basic Books, Inc.,New York, NY,2018. 432 pp.Type:Book
Date Reviewed: 11/27/18

The well-known 20th century scientist J. B. S. Haldane is famouslyquoted as having said, “Teleology is like a mistress to a biologist: he cannot live without her, but he’s unwilling to be seen with her in public.” Haldane’s point was that teleology, the study of purposes and primal causes, is critical to the understanding of natural phenomena, particularly the choices that biological creatures make; however, as teleology is also tied up with creationism and is therefore perceived as being against the Darwinist tradition of modern biology, it is officially taboo and unacceptable.

A similar situation occurs with the study of causality, acritical issue in science and even in everyday life, but one that hasconfounded philosophers and laypeople alike for centuries. Causalitystands all but abandoned by classical statistics, as shown by thedictum “correlation does not imply causation.” Statistics has been confined to correlation and other issues that are amenable tomathematically precise formulation. As successors of statistics,machine learning (ML) and artificial intelligence (AI) are similarly only applied to correlations, and are of little use for understanding causal relationships.

Judea Pearl, the primary author of this book, is possibly the scholar and scientist most known for his work to remedy this deplorable state of affairs, by bringing causality out from the dark shadows ofignorance and indifference to the bright daylight of scientificscrutiny and understanding. Pearl is of course also well known forhis work in probabilistic AI, specifically Bayesian networks, but hehas also, in the latter half of his career, done seminal work ongiving a formal structure to causal reasoning [1,2]. Though Pearl’s work has perhaps not yet had the large impact one would like to see, it has spawned some important related work [3].

The present book finds its place in precisely this context. It is avery readable and engaging account of the quest, largely by Pearl himself, to restore causality to its rightful place as a pillarof wholesome scientific reasoning. There are few formal prerequisitesfor reading and understanding this book; the writing is, in thetradition of Ian Stewart and Martin Gardner, very effective atconveying sophisticated concepts to nonspecialists or eventalented and well-read amateurs.

The book, spread over ten chapters, gives a round-up of key concepts, including the “ladder of causation” (a concept from Pearl) as well as the history of statistical research, with Karl Pearson as the early antagonist and Sewall Wright as the early protagonist for causal reasoning. The sixth chapter deals with paradoxes and is particularly interesting to read; it clearly shows how paradoxes arise in our minds when probabilistic reasoning takes the place of causal reasoning. The explanation of the Monty Hall problem (which itself has famously confounded even some esteemed mathematicians) is a special highlight.

The primary value of the book is perhaps in showing the value ofcausal understanding for counterfactual reasoning, the considerationof scenarios that have not yet come to pass (and perhaps never will).This is something that people do effortlessly in their daily lives,but which AI and ML systems are completely incapable of. The bookconsiders some issues related to the current fads of big data and AI,and sounds an appropriate note of caution about the limits of thecurrent approaches, suggesting how AI that incorporates causalreasoning could cross hurdles that no current approach can.

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1)

Pearl, J. Causality: models, reasoning, and inference (2nd ed.). Cambridge University Press, New York, NY, 2009.


2)

Pearl, J.; Glymour, M.; Jewell, N. P. Causal inference in statistics: a primer. Wiley, Chichester, UK, 2016.


3)

Spirtes, P.; Glymour, C.; Scheines, R. Causation, prediction, and search (2nd ed.). MIT Press, Cambridge, MA, 2001.

Reviewer:  Shrisha Rao Review #: CR146328 (1901-0003)

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