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Jun 1999
ISBN 0262571242
570 pp.
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Computation, Causation, and Discovery
Clark Glymour and Gregory F. Cooper

In science, business, and policymaking -- anywhere data are used in prediction -- two sorts of problems requiring very different methods of analysis often arise. The first, problems of recognition and classification, concerns learning how to use some features of a system to accurately predict other features of that system. The second, problems of causal discovery, concerns learning how to predict those changes to some features of a system that will result if an intervention changes other features. This book is about the second -- much more difficult -- type of problem.

Typical problems of causal discovery are: How will a change in commission rates affect the total sales of a company? How will a reduction in cigarette smoking among older smokers affect their life expectancy? How will a change in the formula a college uses to award scholarships affect its dropout rate? These sorts of changes are interventions that directly alter some features of the system and perhaps -- and this is the question -- indirectly alter others.

The contributors discuss recent research and applications using Bayes nets or directed graphic representations, including representations of feedback or "recursive" systems. The book contains a thorough discussion of foundational issues, algorithms, proof techniques, and applications to economics, physics, biology, educational research, and other areas.

Table of Contents
 Preface
by Clark Glymour
 Preface
by Clark Glymour
1 An Overview of the Representation and Discovery of Causal Relationships Using Bayesian Networks
by Gregory F. Cooper
I Causation, Representation and Prediction
2 Prediction and Experimental Design with Graphical Causal Models
by Peter Spirtes, Clark Glymour, Richard Scheines, Christopher Meek, Stephen Fienberg and Elizabeth Slate
3 Graphs, Structural Models, and Causality
by Judea Pearl
II Search
4 A Bayesian Approach to Causal Discovery
by David Heckerman, Christopher Meek and Gregory F. Cooper
5 Truth is among the Best Explanations: Finding Causal Explanations of Conditional Independence and Dependence
by Richard Scheines, Clark Glymour, Peter Spirtes, Christopher Meek and Thomas Richardson
6 An Algorithm for Causal Inference in the Presence of Latent Variables and Selection Bias
by Peter Spirtes, Christopher Meek and Thomas Richardson
7 Automated Discovery of Linear Feedback Models
by Thomas Richardson and Peter Spirtes
III Controversy Over Search
8 On the Impossibility of Inferring Causation from Association without Background Knowledge
by James M. Robins and Larry Wasserman
9 On the Possibility of Inferring Causation from Association without Background Knowledge
by Clark Glymour, Peter Spirtes and Thomas Richardson
10 Rejoinder to Glymour, Spirtes, and Richardson
by James M. Robins and Larry Wasserman
11 Response to Rejoinder
by Clark Glymour, Peter Spirtes and Thomas Richardson
IV Estimating Causal Effects
12 Testing and Estimation of Direct Effects by Reparameterizing Directed Acyclic Graphs with Structural Nested Models
by James M. Robins
13 A Clinician's tool for Analyzing Noncompliance
by David Maxwell Chickering and Judea Pearl
14 Estimating Latent Causal: Influences: TETRAD II Model Selection and Bayesian Parameter Estimation
by Richard Scheines
V Scientific Applications
15 Exploring Hypothesis Space: Examples from Organismal Biology
by Bill Shipley
16 In-Flight Calibration of Satellite Ion Composition Data Using Artificial Intelligence Methods
by Joakim Waldemark and Patrick Norqvist
17 Causal Modeling of Spectral Data: A New Tool to Study Nonlinear Processes
by Ludwik Liszka
18 Modeling Corn Exports and Exchange Rates with Directed Graphs and Statistical Loss Functions
by Derya G. Akleman, David A. Bessler and Diana M. Burton
19 Causal Inferences from Databases: Why Universities Lose Students
by Marek J. Druzdzel and Clark Glymour
 Index
 
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