TY - BOOK AU - Meo,Rosa AU - Lanzi,Pier Luca AU - Klemettinen,Mika ED - SpringerLink (Online service) TI - Database Support for Data Mining Applications: Discovering Knowledge with Inductive Queries T2 - Lecture Notes in Computer Science, SN - 9783540444978 AV - Q334-342 U1 - 006.3 23 PY - 2004/// CY - Berlin, Heidelberg PB - Springer Berlin Heidelberg KW - Computer science KW - Database management KW - Information storage and retrieval systems KW - Artificial intelligence KW - Computer Science KW - Artificial Intelligence (incl. Robotics) KW - Database Management KW - Information Storage and Retrieval N1 - Database Languages and Query Execution -- Inductive Databases and Multiple Uses of Frequent Itemsets: The cInQ Approach -- Query Languages Supporting Descriptive Rule Mining: A Comparative Study -- Declarative Data Mining Using SQL3 -- Towards a Logic Query Language for Data Mining -- A Data Mining Query Language for Knowledge Discovery in a Geographical Information System -- Towards Query Evaluation in Inductive Databases Using Version Spaces -- The GUHA Method, Data Preprocessing and Mining -- Constraint Based Mining of First Order Sequences in SeqLog -- Support for KDD-Process -- Interactivity, Scalability and Resource Control for Efficient KDD Support in DBMS -- Frequent Itemset Discovery with SQL Using Universal Quantification -- Deducing Bounds on the Support of Itemsets -- Model-Independent Bounding of the Supports of Boolean Formulae in Binary Data -- Condensed Representations for Sets of Mining Queries -- One-Sided Instance-Based Boundary Sets -- Domain Structures in Filtering Irrelevant Frequent Patterns -- Integrity Constraints over Association Rules N2 - Data mining from traditional relational databases as well as from non-traditional ones such as semi-structured data, Web data, and scientific databases housing biological, linguistic, and sensor data has recently become a popular way of discovering hidden knowledge. This book on database support for data mining is developed to approaches exploiting the available database technology, declarative data mining, intelligent querying, and associated issues, such as optimization, indexing, query processing, languages, and constraints. Attention is also paid to the solution of data preprocessing problems, such as data cleaning, discretization, and sampling. The 16 reviewed full papers presented were carefully selected from various workshops and conferences to provide complete and competent coverage of the core issues. Some papers were developed within an EC funded project on discovering knowledge with inductive queries UR - http://dx.doi.org/10.1007/b99016 ER -