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Fundamentals of Pattern Recognition and Machine Learning (Second Edition 2024)
類型:
精裝書
作者:
Braga-Neto, Ulisses
ISBN13:
9783031609497
出版于:
2024-08-07
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詳細信息
類型:
精裝書
語言:
英語(English)
作者:
Braga-Neto, Ulisses
頁數:
400 頁
出版于:
2024-08-07
ISBN13:
9783031609497
ISBN10:
3031609492
出版社:
Springer International Publishing
規格:
254 x 178 mm
重量:
948 克
商品簡介
<p>This book is a concise but thorough introduction to the tools commonly used in pattern recognition and machine learning, including classification, dimensionality reduction, regression, and clustering, as well as recent popular topics such as deep neural networks and Gaussian process regression. The Second Edition is thoroughly revised, featuring a new chapter on the emerging topic of physics-informed machine learning and additional material on deep neural networks.</p>
<p>Combining theory and practice, this book is suitable for the graduate or advanced undergraduate level classroom and self-study. It fills the need of a mathematically-rigorous text that is relevant to the practitioner as well, with datasets from applications in bioinformatics and materials informatics used throughout to illustrate the theory. These datasets are available from the book website to be used in end-of-chapter coding assignments based on python and Keras/Tensorflow. All plots in the text were generated using python scripts and jupyter notebooks, which can be downloaded from the book website.</p>
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書評與摘要
<p>This book is a concise but thorough introduction to the tools commonly used in pattern recognition and machine learning, including classification, dimensionality reduction, regression, and clustering, as well as recent popular topics such as deep neural networks and Gaussian process regression. The Second Edition includes a new chapter on the emerging topic of physics-informed machine learning and significant additions to the section on neural networks. In addition to the new chapter, <em>Fundamentals of Pattern Recognition and Machine Learning</em> contains other unique features such as an extensive chapter on classifier error estimation and sections on Bayesian error estimation, separate sampling designs, and rank-based classification.</p> <p>Combining theory and practice, this book is suitable for the graduate or advanced undergraduate level classroom and self-study. It fills the need of a mathematically-rigorous text that is relevant to the practitioner as well, with datasets from applications in bioinformatics and materials informatics used throughout to illustrate the theory. These datasets are available from the book website to be used in end-of-chapter coding assignments based on python and Keras/Tensorflow. All plots in the text were generated using python scripts and jupyter notebooks.</p> <p> </p> <p> </p>
