Use coupon code “SUMMER20” for a 20% discount on all items! Valid until 2024-08-31

Site Logo
Search Suggestions

      Royal Mail  express delivery to UK destinations

      Regular sales and promotions

      Stock updates every 20 minutes!

      Model-Based Machine Learning

      6 in stock

      Firm sale: non returnable item
      SKU 9781498756815 Categories ,
      A fundamental challenge when using machine learning is connecting the abstract mathematics of a machine learning technique to real world problems. This book tackles this challenge through model-based machine learning, focusing on understanding the assumptions encoded in a machine learning system.<br...

      £71.99

      Buy new:

      Delivery: UK delivery Only. Usually dispatched in 1-2 working days.

      Shipping costs: All shipping costs calculated in the cart or during the checkout process.

      Standard service (normally 2-3 working days): 48hr Tracked service.

      Premium service (next working day): 24hr Tracked service – signature service included.

      Royal mail: 24 & 48hr Tracked: Trackable items weighing up to 20kg are tracked to door and are inclusive of text and email with ‘Leave in Safe Place’ options, but are non-signature services. Examples of service expected: Standard 48hr service – if ordered before 3pm on Thursday then expected delivery would be on Saturday. If Premium 24hr service used, then expected delivery would be Friday.

      Signature Service: This service is only available for tracked items.

      Leave in Safe Place: This option is available at no additional charge for tracked services.

      Description

      Product ID:9781498756815
      Product Form:Hardback
      Country of Manufacture:US
      Title:Model-Based Machine Learning
      Authors:Author: John Winn
      Page Count:455
      Subjects:Probability and statistics, Probability & statistics, Automatic control engineering, Machine learning, Automatic control engineering, Machine learning
      Description:A fundamental challenge when using machine learning is connecting the abstract mathematics of a machine learning technique to real world problems. This book tackles this challenge through model-based machine learning, focusing on understanding the assumptions encoded in a machine learning system.

      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.

      Imprint Name:Chapman & Hall/CRC
      Publisher Name:Taylor & Francis Inc
      Country of Publication:GB
      Publishing Date:2023-10-26

      Additional information

      Weight886 g
      Dimensions161 × 243 × 29 mm