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  • Relational Knowledge Discovery by M.E. Muller (English) Paperback Book

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      Relational Knowledge Discovery

      by M.E. Muller, M.E. Müller

      What is knowledge and how is it represented? This introductory textbook presents relational methods in machine learning. Its clear and precise presentation is ideal for undergraduate computer science students and it will also interest those who study artificial intelligence or machine learning at the graduate level.

      FORMAT
      Paperback
      LANGUAGE
      English
      CONDITION
      Brand New


      Publisher Description

      What is knowledge and how is it represented? This book focuses on the idea of formalising knowledge as relations, interpreting knowledge represented in databases or logic programs as relational data and discovering new knowledge by identifying hidden and defining new relations. After a brief introduction to representational issues, the author develops a relational language for abstract machine learning problems. He then uses this language to discuss traditional methods such as clustering and decision tree induction, before moving onto two previously underestimated topics that are just coming to the fore: rough set data analysis and inductive logic programming. Its clear and precise presentation is ideal for undergraduate computer science students. The book will also interest those who study artificial intelligence or machine learning at the graduate level. Exercises are provided and each concept is introduced using the same example domain, making it easier to compare the individual properties of different approaches.

      Author Biography

      M. E. Mueller is a Professor of Computer Science at the Bonn-Rhein-Sieg University of Applied Sciences.

      Table of Contents

      1. Introduction; 2. Relational knowledge; 3. From data to hypotheses; 4. Clustering; 5. Information gain; 6. Knowledge and relations; 7. Rough set theory; 8. Inductive logic learning; 9. Ensemble learning; 10. The logic of knowledge; 11. Indexes and bibliography; Bibliography; Index.

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      Introductory textbook presenting relational methods in machine learning.

      Promotional "Headline"

      Introductory textbook presenting relational methods in machine learning.

      Description for Bookstore

      What is knowledge and how is it represented? This introductory textbook presents relational methods in machine learning. Its clear and precise presentation is ideal for undergraduate computer science students and it will also interest those who study artificial intelligence or machine learning at the graduate level.

      Description for Library

      What is knowledge and how is it represented? This introductory textbook presents relational methods in machine learning. Its clear and precise presentation is ideal for undergraduate computer science students and it will also interest those who study artificial intelligence or machine learning at the graduate level.

      Details

      ISBN052112204X
      ISBN-10 052112204X
      ISBN-13 9780521122047
      Media Book
      Format Paperback
      Year 2012
      Publisher Cambridge University Press
      Imprint Cambridge University Press
      Place of Publication Cambridge
      Country of Publication United Kingdom
      DEWEY 006.3
      Pages 280
      Publication Date 2012-06-21
      Short Title RELATIONAL KNOWLEDGE DISCOVERY
      Language English
      UK Release Date 2012-06-21
      AU Release Date 2012-06-21
      NZ Release Date 2012-06-21
      Illustrations Worked examples or Exercises; 20 Halftones, unspecified; 30 Line drawings, unspecified
      Alternative 9780521190213
      Audience Undergraduate
      Author M.E. Müller

      TheNile_Item_ID:168625890;
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