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Model-Based Machine Learning/ John Michael Winn, Christopher M. Bishop, Thomas Diethe, John Guiver, Yordan Zaykov.

By: Contributor(s): Material type: TextTextPublisher: Boca Raton: CRC Press, ©2024Edition: 1st EditionContent type:
  • text
Media type:
  • unmediated
Carrier type:
  • volume
ISBN:
  • 9781498756815
Subject(s): DDC classification:
  • 23 006.31 WJM
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Holdings
Item type Current library Collection Call number Copy number Status Date due Barcode
Books Books Main library Faculty of Engineering & Technology (General) 006.31 WJM (Browse shelf(Opens below)) C.1 Available 00017899

Today, machine learning is being applied to a growing variety of problems in a bewildering variety of domains. A fundamental challenge when using machine learning is connecting the abstract mathematics of a machine learning technique to a concrete, real world problem. This book tackles this challenge through model-based machine learning which focuses on understanding the assumptions encoded in a machine learning system and their corresponding impact on the behaviour of the system.

The key ideas of model-based machine learning are introduced through a series of case studies involving real-world applications. Case studies play a central role because it is only in the context of applications that it makes sense to discuss modelling assumptions. Each chapter introduces one case study and works through step-by-step to solve it using a model-based approach. The aim is not just to explain machine learning methods, but also showcase how to create, debug, and evolve them to solve a problem.

Features:

Explores the assumptions being made by machine learning systems and the effect these assumptions have when the system is applied to concrete problems.
Explains machine learning concepts as they arise in real-world case studies.
Shows how to diagnose, understand and address problems with machine learning systems.
Full source code available, allowing models and results to be reproduced and explored.
Includes optional deep-dive sections with more mathematical details on inference algorithms for the interested reader.

John Winn is a Principal Researcher at Microsoft Research, UK.


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