Cargando…

Handbook of statistical analysis and data mining applications /

The Handbook of Statistical Analysis and Data Mining Applications is a comprehensive professional reference book that guides business analysts, scientists, engineers and researchers (both academic and industrial) through all stages of data analysis, model building and implementation. The Handbook he...

Descripción completa

Detalles Bibliográficos
Clasificación:Libro Electrónico
Autor principal: Nisbet, Robert
Otros Autores: Elder, John F. (John Fletcher), Miner, Gary
Formato: Electrónico eBook
Idioma:Inglés
Publicado: Amsterdam ; Boston : Academic Press/Elsevier, ©2009.
Temas:
Acceso en línea:Texto completo
Texto completo
Tabla de Contenidos:
  • PART I: History of Phases of Data Analysis, Basic Theory, and the Data Mining Process
  • Chapter 1. History
  • The Phases of Data Analysis throughout the Ages
  • Chapter 2. Theory
  • Chapter 3. The Data Mining Process
  • Chapter 4. Data Understanding and Preparation
  • Chapter 5. Feature Selection
  • Selecting the Best Variables
  • Chapter 6: Accessory Tools and Advanced Features in Data
  • PART II:
  • The Algorithms in Data Mining and Text Mining, and the Organization of the Three most common Data Mining Tools
  • Chapter 7. Basic Algorithms
  • Chapter 8: Advanced Algorithms
  • Chapter 9. Text Mining
  • Chapter 10. Organization of 3 Leading Data Mining Tools
  • Chapter 11. Classification Trees = Decision Trees
  • Chapter 12. Numerical Prediction (Neural Nets and GLM)
  • Chapter 13. Model Evaluation and Enhancement
  • Chapter 14. Medical Informatics
  • Chapter 15. Bioinformatics
  • Chapter 16. Customer Response Models
  • Chapter 17. Fraud Detection
  • PART III: Tutorials
  • Step-by-Step Case Studies as a Starting Point to learn how to do Data Mining Analyses
  • Listing of Guest Authors of the Tutorials
  • Tutorials within the book pages:
  • How to use the DMRecipe
  • Aviation Safety using DMRecipe
  • Movie Box-Office Hit Prediction using SPSS CLEMENTINE
  • Bank Financial data
  • using SAS-EM
  • Credit Scoring
  • CRM Retention using CLEMENTINE
  • Automobile
  • Cars
  • Text Mining
  • Quality Control using Data Mining
  • Three integrated tutorials from different domains, but all using C & RT to predict and display possible structural relationships among data:
  • Business Administration in a Medical Industry
  • Clinical Psychology- Finding Predictors of Correct Diagnosis
  • Education
  • Leadership Training: for Business and Education
  • Additional tutorials are available either on the accompanying CD-DVD, or the Elsevier Web site for this book
  • Listing of Tutorials on Accompanying CD
  • PART IV: Paradox of Complex Models; using the "right model for the right use", on-going development, and the Future.
  • Chapter 18: Paradox of Ensembles and Complexity
  • Chapter 19: The Right Model for the Right Use
  • Chapter 20: The Top 10 Data Mining Mistakes
  • Chapter 21: Prospect for the Future
  • Developing Areas in Data Mining.