1.

Record Nr.

UNINA9910437580203321

Autore

Richter Michael M

Titolo

Case-Based Reasoning : A Textbook / / by Michael M. Richter, Rosina O. Weber

Pubbl/distr/stampa

Berlin, Heidelberg : , : Springer Berlin Heidelberg : , : Imprint : Springer, , 2013

ISBN

3-642-40167-8

Edizione

[1st ed. 2013.]

Descrizione fisica

1 online resource (XVIII, 546 p. 180 illus., 7 illus. in color.)

Disciplina

006.3

Soggetti

Artificial intelligence

Information technology

Business - Data processing

Computers

Application software

Artificial Intelligence

IT in Business

Information Systems and Communication Service

Computer Applications

Lingua di pubblicazione

Inglese

Formato

Materiale a stampa

Livello bibliografico

Monografia

Note generali

Bibliographic Level Mode of Issuance: Monograph

Nota di bibliografia

Includes bibliographical references and index.

Nota di contenuto

Part I - Basics and Preliminaries -- Chap. 1 - Introduction -- Chap. 2 - Basic CBR Elements -- Chap. 3 - Extended View -- Chap. 4 - Application Examples -- Part II - Core Methods -- Chap. 5 - Case Representations -- Chap. 6 - Basic Similarity Topics -- Chap. 7 - Complex Similarity Topics -- Chap. 8 - Retrieval -- Chap. 9 - Adaptation -- Chap. 10 - Evaluation, Revisions, and Learning -- Chap. 11 - Development and Maintenance -- Part III - Advanced Elements -- Chap. 12 - Advanced CBR Elements -- Chap. 13 - Advanced Similarity Topics -- Chap. 14 - Advanced Retrieval -- Chap. 15 - Uncertainty -- Chap. 16 - Probabilities -- Part IV - Complex Knowledge Sources -- Chap. 17 - Textual CBR -- Chap. 18 - Images -- Chap. 19 - Sensor Data and Speech -- Chap. 20 - Conversational CBR -- Chap. 21 - Knowledge Management -- Part V - Appendices -- Chap. 22 - Basic Formal Definitions and Methods -- Chap. 23 - Relations and



Comparisons with Other Techniques.

Sommario/riassunto

While it is relatively easy to record billions of experiences in a database, the wisdom of a system is not measured by the number of its experiences but rather by its ability to make use of them. Case-based rea­soning (CBR) can be viewed as experience mining, with analogical reasoning applied to problem–solution pairs. As cases are typically not identical, simple storage and recall of experiences is not sufficient, we must define and analyze similarity and adaptation. The fundamentals of the approach are now well-established, and there are many successful commercial applications in diverse fields, attracting interest from researchers across various disciplines.   This textbook presents case-based reasoning in a systematic approach with two goals: to present rigorous and formally valid structures for precise reasoning, and to demonstrate the range of techniques, methods, and tools available for many applications. In the chapters in Part I the authors present the basic elements of CBR without assuming prior reader knowledge; Part II explains the core methods, in particu­lar case representations, similarity topics, retrieval, adaptation, evaluation, revisions, learning, develop­ment, and maintenance; Part III offers advanced views of these topics, additionally covering uncertainty and probabilities; and Part IV shows the range of knowledge sources, with chapters on textual CBR, im­ages, sensor data and speech, conversational CBR, and knowledge management. The book concludes with appendices that offer short descriptions of the basic formal definitions and methods, and comparisons be­tween CBR and other techniques.   The authors draw on years of teaching and training experience in academic and business environments, and they employ chapter summaries, background notes, and exercises throughout the book. It's suitable for advanced undergraduate and graduate students of computer science, management, and related disciplines, and it's also a practical introduction and guide for industrial researchers and practitioners engaged with knowledge engineering systems.