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...
Clasificación: | Libro Electrónico |
---|---|
Autor principal: | |
Otros Autores: | , |
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.