<p><span>The domains of Pattern Recognition and Machine Learning have experienced exceptional interest and growth, however the overwhelming number of methods and applications can make the fields seem bewildering. This text offers an accessible and conceptually rich introduction, a solid mathematical
Introduction to Pattern Recognition and Machine Learning (IISc Lecture Notes - Volume 5)
โ Scribed by M Narasimha Murty, V Susheela Devi
- Publisher
- World Scientific Publishing Company
- Year
- 2014
- Tongue
- English
- Leaves
- 402
- Category
- Library
No coin nor oath required. For personal study only.
โฆ Synopsis
This book adopts a detailed and methodological algorithmic approach to explain the concepts of pattern recognition. While the text provides a systematic account of its major topics such as pattern representation and nearest neighbour based classifiers, current topics โ neural networks, support vector machines and decision trees โ attributed to the recent vast progress in this field are also dealt with. Introduction to Pattern Recognition and Machine Learning will equip readers, especially senior computer science undergraduates, with a deeper understanding of the subject matter.
Readership: Academics and working professionals in computer science.
โฆ Subjects
Computer Vision Pattern Recognition AI Machine Learning Science Computers Technology Imaging Systems Modelling Engineering
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