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In recent years, small groups of statisticians, computer scientists,
and philosophers have developed an account of how partial causal
knowledge can be used to compute the effect of actions and how causal
relations can be learned, at least by computers. The representations
used in the emerging theory are causal Bayes nets or graphical causal
models.
In his new book, Clark Glymour provides an informal introduction to
the basic assumptions, algorithms, and techniques of causal Bayes nets
and graphical causal models in the context of psychological
examples. He demonstrates their potential as a powerful tool for
guiding experimental inquiry and for interpreting results in
developmental psychology, cognitive neuropsychology, psychometrics,
social psychology, and studies of adult judgment. Using Bayes net
techniques, Glymour suggests novel experiments to distinguish among
theories of human causal learning and reanalyzes various experimental
results that have been interpreted or misinterpreted--without the
benefit of Bayes nets and graphical causal models. The capstone
illustration is an analysis of the methods used in Herrnstein and
Murray's book The Bell Curve; Glymour argues that new,
more reliable methods of data analysis, based on Bayes nets
representations, would lead to very different conclusions from those
advocated by Herrnstein and Murray.
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