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Reliable Knowledge Discovery
Details
Reliable Knowledge Discovery focuses on theory, methods, and techniques for RKDD, a new sub-field of KDD. It studies the theory and methods to assure the reliability and trustworthiness of discovered knowledge and to maintain the stability and consistency of knowledge discovery processes. RKDD has a broad spectrum of applications, especially in critical domains like medicine, finance, and military.
Reliable Knowledge Discovery also presents methods and techniques for designing robust knowledge-discovery processes. Approaches to assessing the reliability of the discovered knowledge are introduced. Particular attention is paid to methods for reliable feature selection, reliable graph discovery, reliable classification, and stream mining. Estimating the data trustworthiness is covered in this volume as well. Case studies are provided in many chapters.
Reliable Knowledge Discovery is designed for researchers and advanced-level students focused on computer science and electrical engineering as a secondary text or reference. Professionals working in this related field and KDD application developers will also find this book useful.
Includes supplementary material: sn.pub/extras
Klappentext
Reliable Knowledge Discovery focuses on theory, methods, and techniques for RKDD, a new sub-field of KDD. It studies the theory and methods to assure the reliability and trustworthiness of discovered knowledge and to maintain the stability and consistency of knowledge discovery processes. RKDD has a broad spectrum of applications, especially in critical domains like medicine, finance, and military. Reliable Knowledge Discovery also presents methods and techniques for designing robust knowledge-discovery processes. Approaches to assessing the reliability of the discovered knowledge are introduced. Particular attention is paid to methods for reliable feature selection, reliable graph discovery, reliable classification, and stream mining. Estimating the data trustworthiness is covered in this volume as well. Case studies are provided in many chapters. Reliable Knowledge Discovery is designed for researchers and advanced-level students focused on computer science and electrical engineering as a secondary text or reference. Professionals working in this related field and KDD application developers will also find this book useful.
Inhalt
Transductive Reliability Estimation for Individual Classifications in Machine Learning and Data Mining.- Estimating Reliability for Assessing and Correcting Individual Streaming Predictions.- Error Bars for Polynomial Neural Networks.- Robust-Diagnostic Regression: A Prelude for Inducing Reliable Knowledge from Regression.- Reliable Graph Discovery.- Combining Version Spaces and Support Vector Machines for Reliable Classification.- Reliable Ticket Routing in Expert Networks.- Reliable Aggregation on Network Traffic for Web Based Knowledge Discovery.- Sensitivity and Generalization of SVM with Weighted and Reduced Features.- Reliable Gesture Recognition with Transductivie Confidence Machines.- Reliability in A Feature-Selection Process for Intrusion Detection.- The Impact of Sample Size and Data Quality to Classification Reliability.- A Comparative Analysis of Instance-based Penalization Techniques for Classification.- Subsequence Frequency Measurement and its Impact on Reliability of Knowledge Discovery in Single Sequences.- Improving Reliability of Unbalanced Text Mining by Reducing Performance Bias.- Formal Representation and Verification of Ontology Using State Controlled Coloured Petri Nets.- A Reliable System Platform for Group Decision Support under Uncertain Environments.- Index.
Weitere Informationen
- Allgemeine Informationen
- GTIN 09781461419020
- Editor Honghua Dai, Evgueni Smirnov, James N. K. Liu
- Sprache Englisch
- Auflage 2012
- Größe H241mm x B160mm x T23mm
- Jahr 2012
- EAN 9781461419020
- Format Fester Einband
- ISBN 1461419026
- Veröffentlichung 23.02.2012
- Titel Reliable Knowledge Discovery
- Gewicht 658g
- Herausgeber Springer New York
- Anzahl Seiten 328
- Lesemotiv Verstehen
- Genre Informatik