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Enhance your business applications : simple integration of advanced data mining functions / / Corinne Baragoin, et al



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Autore: Baragoin Corinne Visualizza persona
Titolo: Enhance your business applications : simple integration of advanced data mining functions / / Corinne Baragoin, et al Visualizza cluster
Pubblicazione: [Armonk, N.Y.], : IBM, 2002
Descrizione fisica: 1 online resource (348 p.)
Disciplina: 006.3/12
Soggetto topico: Data mining
Business - Data processing
Note generali: "December 2002."
"This edition applied to IBM DB2 intelligent miner modeling version 8.1, IBM DB2 intelligent miner scoring version 8.1, and IBM DB2 intelligent miner visualization version 8.1."
Nota di bibliografia: Includes bibliographical references and index.
Nota di contenuto: Front cover -- Contents -- Figures -- Tables -- Examples -- Notices -- Trademarks -- Preface -- The team that wrote this redbook -- Become a published author -- Comments welcome -- Part 1 Advanced data mining functions overview -- Chapter 1. Data mining functions in the database -- 1.1 The evolution of data mining -- 1.2 Data mining does not stand alone anymore -- 1.2.1 Faster time to market and closing the loop -- 1.2.2 Real-time analytics -- 1.2.3 Leveraging existing IT skills -- 1.2.4 Building repeatable processes and tasks -- 1.2.5 Efficiency and effectiveness -- 1.2.6 Cost reduction of mining analytics -- Chapter 2. Overview of the new data mining functions -- 2.1 Why relational database management system (RDBMS) functions -- 2.1.1 Easy use of automation and integration -- 2.1.2 Operational efficiency -- 2.1.3 Performance -- 2.1.4 Administrative efficiency -- 2.2 Scoring: Deploying data mining models -- 2.2.1 Scoring as an SQL extension -- 2.2.2 Batch mode and real time -- 2.2.3 Support for the new PMML 2.0 standard -- 2.2.4 Leveraging existing IT skills -- 2.3 Modeling: Building a mining model using SQL -- 2.3.1 Interoperability -- 2.3.2 Models in DB2 UDB -- 2.3.3 Support of the new PMML 2.0 standard -- 2.3.4 Required skills -- 2.4 Visualization: Understanding the data mining model -- 2.4.1 Interoperability -- 2.4.2 Choice in use -- 2.4.3 Multiplatform capability -- 2.4.4 Support of the new PMML 2.0 standard -- 2.4.5 Required skills -- 2.5 IM Modeling, Scoring, and Visualization interactions -- 2.5.1 The whole picture -- 2.5.2 Configurations -- 2.5.3 Positioning with Intelligent Miner for Data -- 2.6 Conclusion -- Chapter 3. Business scenario deployment examples -- 3.1 Customer profiling -- 3.1.1 Business benefits -- 3.2 Fraud detection -- 3.2.1 Business benefits -- 3.3 Campaign management -- 3.3.1 Business benefits.
3.4 Up-to-date promotion -- 3.4.1 Business benefits -- 3.5 Integrating the generic components -- 3.5.1 Generic environment and components -- 3.5.2 The method -- Part 2 Deploying data mining functions -- Chapter 4. Customer profiling example -- 4.1 The business issue -- 4.2 Mapping the business issue to data mining functions -- 4.3 The business application -- 4.4 Environment, components, and implementation flow -- 4.5 Step-by-step implementation -- 4.5.1 Configuration -- 4.5.2 Workbench data mining -- 4.5.3 Scoring -- 4.5.4 Application integration -- 4.6 Benefits -- 4.6.1 End-to-end implementation -- 4.6.2 DB2 mining functions next to the workbench -- 4.6.3 Real-time analytics -- 4.6.4 Automated and on demand for multi-channels -- Chapter 5. Fraud detection example -- 5.1 The business issue -- 5.2 Mapping the business issue to data mining functions -- 5.3 The business application -- 5.4 Environment, components, and implementation flow -- 5.5 Data to be used -- 5.5.1 Data extraction -- 5.5.2 Data manipulation and enrichment -- 5.6 Implementation in DB2 UDB V8.1 -- 5.6.1 Enabling database for modeling and scoring -- 5.6.2 Installing additional UDFs and stored procedures -- 5.6.3 Model building -- 5.7 Implementation in DB2 UDB V7.2 -- 5.7.1 Prerequisite: Initial model building -- 5.7.2 Data settings -- 5.7.3 Model parameter settings -- 5.7.4 Building the mining task -- 5.7.5 Running the model by calling a stored procedure -- 5.7.6 Scoring script generation -- 5.7.7 Applying the scoring model -- 5.7.8 Ranking and listing the five smallest clusters -- 5.7.9 Actionable result for investigation -- 5.7.10 Scheduling the job to run at regular intervals -- 5.8 Benefits -- 5.8.1 A system that adapts to changes in undesirable behavior -- 5.8.2 Fast deployment of fraud detection system -- 5.8.3 Better use of data mining resource.
5.8.4 A repeatable data mining process in a production environment -- 5.8.5 Enhanced communication -- 5.8.6 Leveraged IT skills for advanced analytical application -- 5.8.7 Actionable result -- Chapter 6. Campaign management solution examples -- 6.1 Campaign management overview -- 6.2 Trigger-based marketing -- 6.2.1 The business issue -- 6.2.2 Mapping the business issue to data mining functions -- 6.2.3 The business application -- 6.2.4 Environment, components, and implementation flow -- 6.2.5 Step-by-step implementation -- 6.2.6 Benefits -- 6.3 Retention campaign -- 6.3.1 The business issue -- 6.3.2 Mapping the business issue to data mining functions -- 6.3.3 The business application -- 6.3.4 Environment, components, and implementation flow -- 6.3.5 Step-by-step implementation -- 6.3.6 Benefits -- 6.4 Cross-selling campaign -- 6.4.1 The business issue -- 6.4.2 Mapping the business issue to data mining functions -- 6.4.3 The business application -- 6.4.4 Environment, components, and implementation flow -- 6.4.5 Step-by-step implementation -- 6.4.6 Other considerations -- Chapter 7. Up-to-date promotion example -- 7.1 The business issue -- 7.2 Mapping the business issue to data mining functions -- 7.3 The business application -- 7.4 Environment, components, and implementation flow -- 7.5 Step-by-step implementation -- 7.5.1 Configuration -- 7.5.2 Data model -- 7.5.3 Modeling -- 7.5.4 Application integration -- 7.6 Benefits -- 7.6.1 Automating models: Easy to use -- 7.6.2 Calibration: New data = new model -- Chapter 8. Other possibilities of integration -- 8.1 Real-time scoring on the Web (using Web analytics) -- 8.1.1 The business issue -- 8.1.2 Mapping the business issue to data mining functions -- 8.1.3 The business application -- 8.1.4 Integration with the application example -- 8.2 Business Intelligence integration.
8.2.1 Integration with DB2 OLAP -- 8.2.2 Integration with QMF -- 8.3 Integration with e-commerce -- 8.4 Integration with WebSphere Personalization -- 8.5 Integration using Java -- 8.5.1 Online scoring with IM Scoring Java Beans -- 8.5.2 Typical business issues -- 8.5.3 Mapping to mining functions using IM Scoring Java Beans -- 8.5.4 The business application -- 8.5.5 Integration with the application example -- 8.6 Conclusion -- Part 3 Configuring the DB2 functions for data mining -- Chapter 9. IM Scoring functions for existing mining models -- 9.1 Scoring functions -- 9.1.1 Scoring mining models -- 9.1.2 Scoring results -- 9.2 IM Scoring configuration steps -- 9.3 Step-by-step configuration -- 9.3.1 Configuring the DB2 UDB instance -- 9.3.2 Configuring the database -- 9.3.3 Exporting models from the modeling environment -- 9.3.4 Importing the data mining model in the relational database management system (RDBMS) -- 9.3.5 Scoring the data -- 9.3.6 Exploiting the results -- 9.4 Conclusion -- Chapter 10. Building the mining models using IM Modeling functions -- 10.1 IM Modeling functions -- 10.2 Data mining process with IM Modeling -- 10.3 Configuring a database for mining -- 10.3.1 Enabling the DB2 UDB instance for modeling -- 10.3.2 Configuring the individual database for modeling -- 10.3.3 IM Modeling in DB2 UDB V8.1 -- 10.4 Specifying mining data -- 10.4.1 Defining mining settings -- 10.4.2 Defining mining tasks -- 10.4.3 Building and storing mining models -- 10.4.4 Testing the classification models -- 10.4.5 Working with mining models and test results -- 10.5 Hybrid modeling -- 10.6 Conclusion -- Chapter 11. Using IM Visualization functions -- 11.1 IM Visualization functions -- 11.1.1 Common and different tasks -- 11.1.2 Applets or Java API -- 11.2 Configuration settings -- 11.2.1 Loading a model from a local file system.
11.2.2 Loading a model from a database -- 11.3 Using IM Visualizers -- 11.3.1 Using IM Visualizers as applets -- 11.3.2 Complete example script -- 11.4 Examples of IM Visualization -- Part 4 Appendixes -- Appendix A. SQL script to configure database for data mining function -- Appendix B. SQL scripts for the customer profiling scenario -- Script to create and load the customer segment table -- Script to score new customers -- Appendix C. SQL scripts for the fraud detection scenario -- Script to prepare the data -- Script to build the data mining model -- Script to score the data -- Script to get the scoring results -- Appendix D. SQL scripts for the retention campaign scenario -- Script to create a table -- Script to import the data mining model with PMML file -- Script to create a view of the resulting score -- Script to create a table with the resulting score -- Appendix E. SQL scripts for the up-to-date promotion scenario -- Script for function to build the associations rule model -- Script for a function that transforms the resulting rule model -- Script to build the rules model -- Script to extract rules to a table -- Appendix F. UDF to create data mining models -- Appendix G. UDF to extract rules from a model to a table -- Appendix H. Embedding an IM Visualization applet -- Syntax to embed the IM Visualization applet -- Parameters to use -- Appendix I. IM Scoring Java Bean code example -- Source code of IM Scoring Java Bean -- Setting up the environment variables: The paths.bat file -- Appendix J. Demographic clustering: Technical differences -- Appendix K. Additional material -- Locating the Web material -- Using the Web material -- System requirements for downloading the Web material -- How to use the Web material -- Glossary -- Abbreviations and acronyms -- Related publications -- IBM Redbooks -- Other resources -- Referenced Web sites.
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Titolo autorizzato: Enhance your business applications  Visualizza cluster
Formato: Materiale a stampa
Livello bibliografico Monografia
Lingua di pubblicazione: Inglese
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