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                                 There are also many books on data warehouse technology, systems, and applica-
                               tions, such as The Data Warehouse Toolkit: The Complete Guide to Dimensional Modeling
                               by Kimball and Ross [KR02]; The Data Warehouse Lifecycle Toolkit by Kimball, Ross,
                               Thornthwaite, and Mundy [KRTM08]; Mastering Data Warehouse Design: Relational
                               and Dimensional Techniques by Imhoff, Galemmo, and Geiger [IGG03]; and Building
                               the Data Warehouse by Inmon [Inm96]. A set of research papers on materialized views
                               and data warehouse implementations were collected in Materialized Views: Techniques,
                               Implementations, and Applications by Gupta and Mumick [GM99]. Chaudhuri and
                               Dayal [CD97] present an early comprehensive overview of data warehouse technology.
                                 Research results relating to data mining and data warehousing have been pub-
                               lished in the proceedings of many international database conferences, including the
                               ACM-SIGMOD International Conference on Management of Data (SIGMOD), the
                               International Conference on Very Large Data Bases (VLDB), the ACM SIGACT-
                               SIGMOD-SIGART Symposium on Principles of Database Systems (PODS), the Inter-
                               national Conference on Data Engineering (ICDE), the International Conference on
                               Extending Database Technology (EDBT), the International Conference on Database
                               Theory (ICDT), the International Conference on Information and Knowledge Man-
                               agement (CIKM), the International Conference on Database and Expert Systems Appli-
                               cations (DEXA), and the International Symposium on Database Systems for Advanced
                               Applications (DASFAA). Research in data mining is also published in major database
                               journals, such as IEEE Transactions on Knowledge and Data Engineering (TKDE), ACM
                               Transactions on Database Systems (TODS), Information Systems, The VLDB Journal,
                               Data and Knowledge Engineering, International Journal of Intelligent Information Systems
                               (JIIS), and Knowledge and Information Systems (KAIS).
                                 Many effective data mining methods have been developed by statisticians and intro-
                               duced in a rich set of textbooks. An overview of classification from a statistical pattern
                               recognition perspective can be found in Pattern Classification by Duda, Hart, and Stork
                               [DHS01]. There are also many textbooks covering regression and other topics in statis-
                               tical analysis, such as Mathematical Statistics: Basic Ideas and Selected Topics by Bickel
                               and Doksum [BD01]; The Statistical Sleuth: A Course in Methods of Data Analysis by
                               Ramsey and Schafer [RS01]; Applied Linear Statistical Models by Neter, Kutner, Nacht-
                               sheim, and Wasserman [NKNW96]; An Introduction to Generalized Linear Models by
                               Dobson [Dob90]; Applied Statistical Time Series Analysis by Shumway [Shu88]; and
                               Applied Multivariate Statistical Analysis by Johnson and Wichern [JW92].
                                 Research in statistics is published in the proceedings of several major statistical con-
                               ferences, including Joint Statistical Meetings, International Conference of the Royal
                               Statistical Society and Symposium on the Interface: Computing Science and Statistics.
                               Other sources of publication include the Journal of the Royal Statistical Society, The
                               Annals of Statistics, the Journal of American Statistical Association, Technometrics, and
                               Biometrika.
                                 Textbooks and reference books on machine learning and pattern recognition include
                               Machine Learning by Mitchell [Mit97]; Pattern Recognition and Machine Learning by
                               Bishop [Bis06]; Pattern Recognition by Theodoridis and Koutroumbas [TK08]; Introduc-
                               tion to Machine Learning by Alpaydin [Alp11]; Probabilistic Graphical Models: Principles
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