"The present book evaluates a striking new claim to provide the means for causal inference from statistical association. Readers can get a quick overview, or that plus a tutorial-like introduction to the statistical principles underlying the SGS algorithm, move on to discussions about the pros and cons of the method, and end with a deep understanding of the difficult issues that have surfaced here. And, what will prove most satisfying to the historically minded readers of JHBS, the endeavor is placed in a historical context that illuminates the nature of the issues at hand. It is refreshing to find an exception, an edited book with a consistent theme, an organization that encourages reading from beginning to end...Readers who take the time to do this will be rewarded with a new perspective on some old questions....the present book makes clear that the difficulties of inferring causation from correlational data are very much with us still. It is a pleasure to recommend this book to readers interested in opening the door to this fundamental issue in social science, whether in the form of the most recent statistically sophisticated approaches, or to the very first attempts to grapple with it." —Journal of the History of the Behavioral Sciences,"This is a collection of essays by a distinguished group of authors that is a 'must read' for those interested in causal modeling." —Philosophy in Review". . . an exceptionally well written treatment of the current crisis in sociological methodology, with rich and lucid discussions, particularly by the editors, Vaughn McKim and Stephen Turner." —Social Forces"[A]n attempt to set out what the problems with contemporary statistical methods are, what solutions are being proposed, and to open up the debates about their effectiveness to a wider audience." —Social Studies of Science"This is a collection of essys by a distinguished group of authors that is a 'must read' for those with an interest in causal modeling." —Piers Rawling, University of Missouri-St. Louis