Rough Sets in Knowledge Discovery 2: Applications, Case Studies and Software Systems: Studies in Fuzziness and Soft Computing, cartea 19
Editat de Lech Polkowskien Limba Engleză Hardback – 20 aug 1998
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Specificații
ISBN-13: 9783790811209
ISBN-10: 3790811203
Pagini: 616
Ilustrații: X, 601 p.
Dimensiuni: 155 x 235 x 38 mm
Greutate: 1.28 kg
Ediția:1998
Editura: Physica-Verlag HD
Colecția Physica
Seria Studies in Fuzziness and Soft Computing
Locul publicării:Heidelberg, Germany
ISBN-10: 3790811203
Pagini: 616
Ilustrații: X, 601 p.
Dimensiuni: 155 x 235 x 38 mm
Greutate: 1.28 kg
Ediția:1998
Editura: Physica-Verlag HD
Colecția Physica
Seria Studies in Fuzziness and Soft Computing
Locul publicării:Heidelberg, Germany
Public țintă
ResearchCuprins
1. Introducing the Book.- 1. Applications.- 2. Rough Approximation of a Preference Relation in a Pairwise Comparison Table.- 3. Learning Decision Rules from Similarity Based Rough Approximations.- 4. Discovery of Data Patterns with Applications to Decomposition and Classification Problems.- 5. Answering Non-Standard Queries in Distributed Knowledge-Based Systems.- 6. Approximation Spaces, Reducts and Representatives.- 7. Data Mining: A Probabilistic Rough Set Approach.- 2: Case Studies.- 8. Soft Processing of Audio Signals.- 9. A Rough Set Approach to Information Retrieval.- 10. Extraction Method Based on Rough Set Theory of Rule-Type Knowledge from Diagnostic Cases of Slope-Failure Danger Levels.- 11. Soft Computing-Based Recognition of Musical Sounds.- 12. Rough Sets in Industrial Applications.- 13. Rough Sets in Economic Applications.- 14. Multistage Rough Set Analysis of Therapeutic Experience with Acute Pancreatitis.- 15. Reduction Methods for Medical Data.- 16. Formalization and Induction of Medical Expert System Rules Based on Rough Set Theory.- 17. Rough Sets for Database Marketing.- 18. A New Halftoning Method Based on Error Diffusion with Rough Set Filtering.- 3: Hybrid Approaches.- 19. IRIS Revisited: A Comparison of Discriminant and Enhanced Rough Set Data Analysis.- 20. Applications of Rough Patterns.- 21. Time and Clock Information Systems: Concepts and Roughly Fuzzy Petri Net Models.- 22. The Synthesis Problem of Concurrent Systems Specified by Dynamic Information Systems.- 23. Rough Sets and Artificial Neural Networks.- 24. Genetic Algorithms in Decomposition and Classification Problems.- Appendix 1: Rough Set Bibliography.- Selected Bibliography on Rough Sets.- Appendix 2: Software Systems.- GROBIAN.- RSDM: Rough sets Data Miner, A System to Add Data Mining Capabilities to RDBMS.- LERS — A Knowledge Discovery System.- TRANCE: A Tool for Rough Data Analysis, Classification, and Clustering.- ProbRough — A System for Probabilistic Rough Classifiers Generation.- The ROSETTA Software System.- RSL — The Rough Set Library.- Rough Family — Software Implementation of the Rough Set Theory.- TAS: Tools for Analysis and Synthesis of Concurrent Processes Using Rough Set Methods.- RoughFuzzyLab — A System for Data Mining and Rough and Fuzzy Sets Based Classification.- PRIMEROSE.- KDD-R: Rough Sets-Based Data Mining System.
Caracteristici
Provides many very interesting results Marks out future directions of developments of this domain