04377nam 22007935 450 991048483800332120251226203155.03-540-31351-610.1007/11615576(CKB)1000000000232771(SSID)ssj0000316987(PQKBManifestationID)11258588(PQKBTitleCode)TC0000316987(PQKBWorkID)10287065(PQKB)11372535(DE-He213)978-3-540-31351-9(MiAaPQ)EBC3068391(PPN)123130662(BIP)32372860(BIP)13290800(EXLCZ)99100000000023277120100417d2006 u| 0engurnn|008mamaatxtccrConstraint-Based Mining and Inductive Databases European Workshop on Inductive Databases and Constraint Based Mining, Hinterzarten, Germany, March 11-13, 2004, Revised Selected Papers /edited by Jean-Francois Boulicaut, Luc De Raedt, Heikki Mannila1st ed. 2006.Berlin, Heidelberg :Springer Berlin Heidelberg :Imprint: Springer,2006.1 online resource (X, 404 p.) Lecture Notes in Artificial Intelligence,2945-9141 ;3848Bibliographic Level Mode of Issuance: Monograph3-540-31331-1 Includes bibliographical references and index.The Hows, Whys, and Whens of Constraints in Itemset and Rule Discovery -- A Relational Query Primitive for Constraint-Based Pattern Mining -- To See the Wood for the Trees: Mining Frequent Tree Patterns -- A Survey on Condensed Representations for Frequent Sets -- Adaptive Strategies for Mining the Positive Border of Interesting Patterns: Application to Inclusion Dependencies in Databases -- Computation of Mining Queries: An Algebraic Approach -- Inductive Queries on Polynomial Equations -- Mining Constrained Graphs: The Case of Workflow Systems -- CrossMine: Efficient Classification Across Multiple Database Relations -- Remarks on the Industrial Application of Inductive Database Technologies -- How to Quickly Find a Witness -- Relevancy in Constraint-Based Subgroup Discovery -- A Novel Incremental Approach to Association Rules Mining in Inductive Databases -- Employing Inductive Databases in Concrete Applications -- Contribution to Gene Expression Data Analysis by Means of Set Pattern Mining -- Boolean Formulas and Frequent Sets -- Generic Pattern Mining Via Data Mining Template Library -- Inductive Querying for Discovering Subgroups and Clusters.The interconnected ideas of inductive databases and constraint-based mining are appealing and have the potential to radically change the theory and practice of data mining and knowledge discovery. This book reports on the results of the European IST project "cInQ" (consortium on knowledge discovery by Inductive Queries) and its final workshop entitled Constraint-Based Mining and Inductive Databases organized in Hinterzarten, Germany in March 2004.Lecture Notes in Artificial Intelligence,2945-9141 ;3848Artificial intelligenceComputer scienceDatabase managementInformation storage and retrieval systemsPattern recognition systemsArtificial IntelligenceTheory of ComputationDatabase ManagementInformation Storage and RetrievalAutomated Pattern RecognitionArtificial intelligence.Computer science.Database management.Information storage and retrieval systems.Pattern recognition systems.Artificial Intelligence.Theory of Computation.Database Management.Information Storage and Retrieval.Automated Pattern Recognition.005.74Boulicaut Jean-François0Raedt Luc de1964-1754852Mannila Heikki145716MiAaPQMiAaPQMiAaPQBOOK9910484838003321Constraint-based mining and inductive databases4198209UNINA