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This book explores inductive inference using the minimum message
length (MML) principle, a Bayesian method which is a realisation of
Ockham's Razor based on information theory. Accompanied by a
library of software, the book can assist an applications
programmer, student or researcher in the fields of data analysis
and machine learning to write computer programs based upon this
principle. MML inference has been around for 50 years and yet only
one highly technical book has been written about the subject. The
majority of research in the field has been backed by specialised
one-off programs but this book includes a library of general
MML-based software, in Java. The Java source code is available
under the GNU GPL open-source license. The software library is
documented using Javadoc which produces extensive cross referenced
HTML manual pages. Every probability distribution and statistical
model that is described in the book is implemented and documented
in the software library. The library may contain a component that
directly solves a reader's inference problem, or contain components
that can be put together to solve the problem, or provide a
standard interface under which a new component can be written to
solve the problem. This book will be of interest to application
developers in the fields of machine learning and statistics as well
as academics, postdocs, programmers and data scientists. It could
also be used by third year or fourth year undergraduate or
postgraduate students.
This book explores inductive inference using the minimum message
length (MML) principle, a Bayesian method which is a realisation of
Ockham's Razor based on information theory. Accompanied by a
library of software, the book can assist an applications
programmer, student or researcher in the fields of data analysis
and machine learning to write computer programs based upon this
principle. MML inference has been around for 50 years and yet only
one highly technical book has been written about the subject. The
majority of research in the field has been backed by specialised
one-off programs but this book includes a library of general
MML-based software, in Java. The Java source code is available
under the GNU GPL open-source license. The software library is
documented using Javadoc which produces extensive cross referenced
HTML manual pages. Every probability distribution and statistical
model that is described in the book is implemented and documented
in the software library. The library may contain a component that
directly solves a reader's inference problem, or contain components
that can be put together to solve the problem, or provide a
standard interface under which a new component can be written to
solve the problem. This book will be of interest to application
developers in the fields of machine learning and statistics as well
as academics, postdocs, programmers and data scientists. It could
also be used by third year or fourth year undergraduate or
postgraduate students.
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