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OverviewThe Minimum Message Length (MML) Principle is an information-theoretic approach to induction, hypothesis testing, model selection, and statistical inference. MML, which provides a formal specification for the implementation of Occam's Razor, asserts that the �best� explanation of observed data is the shortest. Further, an explanation is acceptable (i.e. the induction is justified) only if the explanation is shorter than the original data.This book gives a sound introduction to the Minimum Message Length Principle and its applications, provides the theoretical arguments for the adoption of the principle, and shows the development of certain approximations that assist its practical application. MML appears also to provide both a normative and a descriptive basis for inductive reasoning generally, and scientific induction in particular. The book describes this basis and aims to show its relevance to the Philosophy of Science.Statistical and Inductive Inference by Minimum Message Length will be of special interest to graduate students and researchers in Machine Learning and Data Mining, scientists and analysts in various disciplines wishing to make use of computer techniques for hypothesis discovery, statisticians and econometricians interested in the underlying theory of their discipline, and persons interested in the Philosophy of Science. The book could also be used in a graduate-level course in Machine Learning and Estimation and Model-selection, Econometrics and Data Mining.C.S. Wallace was appointed Foundation Chair of Computer Science at Monash University in 1968, at the age of 35, where he worked until his death in 2004. He received an ACM Fellowship in 1995, and was appointed Professor Emeritus in 1996. Professor Wallace made numerous significant contributions to diverse areas of Computer Science, such as Computer Architecture, Simulation and Machine Learning. His final research focused primarily on the Minimum Message Length Principle. Full Product DetailsAuthor: C.S. WallacePublisher: Springer-Verlag New York Inc. Imprint: Springer-Verlag New York Inc. Edition: 2005 ed. Dimensions: Width: 15.50cm , Height: 2.50cm , Length: 23.50cm Weight: 1.770kg ISBN: 9780387237954ISBN 10: 038723795 Pages: 432 Publication Date: 26 May 2005 Audience: College/higher education , Postgraduate, Research & Scholarly Format: Hardback Publisher's Status: Active Availability: In Print ![]() This item will be ordered in for you from one of our suppliers. Upon receipt, we will promptly dispatch it out to you. For in store availability, please contact us. Table of ContentsReviewsFrom the reviews: The subject matter is highly technical, and the book is correspondingly detailed. The book is intended for graduate-level courses, and should be effective in that role if the instructor is sufficiently expert in the area. For researchers at the postdoctoral level, the book will provide a wealth of information about the field.! [T]he book is likely to remain the primary reference in the field for many years to come. (Donald RICHARDS, JASA, June 2009, Vol. 104, No. 486) Any statistician interested in the foundations of the discipline, or the deeper philosophical issues of inference, will find this volume a rewarding read. (International Statistical Institute, December 2005) This very significant monograph covers the topic of the Minimum Message Length (MML) principle, a new approach to induction, hypothesis testing, model selection, and statistical inference. ! This valuable book covers the topics at a level suitable for professionals and graduate students in Statistics, Computer Science, Data Mining, Machine Learning, Estimation and Model-selection, Econometrics etc. (Jerzy Martyna, Zentralblatt MATH, Vol. 1085, 2006) This book is around a simple idea: 'The best explanation of the facts is the shortest'. ! The book applies the above idea to statistical estimation in a Bayesian context. ! I think it will be valuable for readers who have at the same time strong interest in Bayesian decision theory and in Shannon information theory. (Michael Kohler, Metrika, Vol. 64, 2006) From the reviews: The subject matter is highly technical, and the book is correspondingly detailed. The book is intended for graduate-level courses, and should be effective in that role if the instructor is sufficiently expert in the area. For researchers at the postdoctoral level, the book will provide a wealth of information about the field... [T]he book is likely to remain the primary reference in the field for many years to come. (Donald RICHARDS, JASA, June 2009, Vol. 104, No. 486) Any statistician interested in the foundations of the discipline, or the deeper philosophical issues of inference, will find this volume a rewarding read. (International Statistical Institute, December 2005) This very significant monograph covers the topic of the Minimum Message Length (MML) principle, a new approach to induction, hypothesis testing, model selection, and statistical inference. ... This valuable book covers the topics at a level suitable for professionals and graduate students in Statistics, Computer Science, Data Mining, Machine Learning, Estimation and Model-selection, Econometrics etc. (Jerzy Martyna, Zentralblatt MATH, Vol. 1085, 2006) This book is around a simple idea: 'The best explanation of the facts is the shortest'. ... The book applies the above idea to statistical estimation in a Bayesian context. ... I think it will be valuable for readers who have at the same time strong interest in Bayesian decision theory and in Shannon information theory. (Michael Kohler, Metrika, Vol. 64, 2006) From the reviews: <p> Any statistician interested in the foundations of the discipline, or the deeper philosophical issues of inference, will find this volume a rewarding read. Short Book Reviews of the International Statistical Institute, December 2005 <p> This very significant monograph covers the topic of the Minimum Message Length (MML) principle, a new approach to induction, hypothesis testing, model selection, and statistical inference. a ] This valuable book covers the topics at a level suitable for professionals and graduate students in Statistics, Computer Science, Data Mining, Machine Learning, Estimation and Model-selection, Econometrics etc. (Jerzy Martyna, Zentralblatt MATH, Vol. 1085, 2006) <p> This book is around a simple idea: a ~The best explanation of the facts is the shortesta (TM). a ] The book applies the above idea to statistical estimation in a Bayesian context. a ] I think it will be valuable for readers who have at the same time strong interest in Bayesian decision theory and in Shannon information theory. (Michael Kohler, Metrika, Vol. 64, 2006) Author InformationC.S. Wallace was appointed Foundation Chair of Computer Science at Monash University in 1968, at the age of 35, where he worked until his death in 2004. He received an ACM Fellowship in 1995, and was appointed Professor Emeritus in 1996. Professor Wallace made numerous significant contributions to diverse areas of Computer Science, such as Computer Architecture, Simulation and Machine Learning. His final research focused primarily on the Minimum Message Length Principle. Tab Content 6Author Website:Countries AvailableAll regions |