Pattern recognition and machine learning – Christopher M.Bishop

Pattern recognition has its origins in engineering, whereas machine learning grew out of computer science. However, these activities can be viewed as two facets of the same field, and together they have undergone substantial development over the past ten years. In particular, Bayesian methods have grown from a specialist niche to become mainstream, while graphical models have emerged as a general framework for describing and applying probabilistic models. Also, the practical applicability of Bayesian methods has been greatly enhanced through the development of a range of approximate inference algorithms such as variational Bayes and expectation propa- gation. Similarly, new models based on kernels have had significant impact on both algorithms and applications.

This new textbook reflects these recent developments while providing a compre- hensive introduction to the fields of pattern recognition and machine learning. It is aimed at advanced undergraduates or first year PhD students, as well as researchers and practitioners, and assumes no previous knowledge of pattern recognition or ma- chine learning concepts. Knowledge of multivariate calculus and basic linear algebra is required, and some familiarity with probabilities would be helpful though not es- sential as the book includes a self-contained introduction to basic probability theory. Because this book has broad scope, it is impossible to provide a complete list of references, and in particular no attempt has been made to provide accurate historical attribution of ideas. Instead, the aim has been to give references that offer greater detail than is possible here and that hopefully provide entry points into what, in some cases, is a very extensive literature. For this reason, the references are often to more recent textbooks and review articles rather than to original sources.

Related posts:

Deep Learning with Keras - Antonio Gulli & Sujit Pal
Learning scikit-learn Machine Learning in Python - Raul Garreta & Guillermo Moncecchi
Foundations of Machine Learning second edition - Mehryar Mohri & Afshin Rostamizadeh & Ameet Talwalk...
Python 3 for Absolute Beginners - Tim Hall & J.P Stacey
Introducing Data Science - Davy Cielen & Arno D.B.Meysman & Mohamed Ali
Deep Learning with Theano - Christopher Bourez
Python Deep Learning Cookbook - Indra den Bakker
Fundamentals of Deep Learning - Nikhil Bubuma
Deep Learning with Python - Francois Chollet
Deep Learning - Ian Goodfellow & Yoshua Bengio & Aaron Courville
Introduction to Machine Learning with Python - Andreas C.Muller & Sarah Guido
Introduction to the Math of Neural Networks - Jeff Heaton
Learn Keras for Deep Neural Networks - Jojo Moolayil
An introduction to neural networks - Kevin Gurney & University of Sheffield
Python Deeper Insights into Machine Learning - Sebastian Raschka & David Julian & John Hearty
Machine Learning - A Probabilistic Perspective - Kevin P.Murphy
Hands-On Machine Learning with Scikit-Learn and TensorFlow - Aurelien Geron
Python Machine Learning - Sebastian Raschka
Deep Learning dummies second edition - John Paul Mueller & Luca Massaronf
Deep Learning and Neural Networks - Jeff Heaton
Python Deep Learning - Valentino Zocca & Gianmario Spacagna & Daniel Slater & Peter Roelants
Python Machine Learning Second Edition - Sebastian Raschka & Vahid Mirjalili
Generative Deep Learning - Teaching Machines to Paint, Write, Compose and Play - David Foster
Python Artificial Intelligence Project for Beginners - Joshua Eckroth
Machine Learning Applications Using Python - Cases studies form Healthcare, Retail, and Finance - Pu...
Introduction to Deep Learning - Eugene Charniak
Data Science and Big Data Analytics - EMC Education Services
The hundred-page Machine Learning Book - Andriy Burkov
Building Machine Learning Systems with Python - Willi Richert & Luis Pedro Coelho
Artificial Intelligence by example - Denis Rothman
Java Deep Learning Essentials - Yusuke Sugomori
Deep Learning with Applications Using Python - Navin Kumar Manaswi