Handbook of Statistical Analysis: AI and ML Applications
Autor Robert Nisbet, Gary D. Miner, Keith McCormicken Limba Engleză Paperback – 20 dec 2024
- Brings together, in a single resource, all the information a beginner needs to understand the tools and issues in data analytics to build successful predictive analytic solutions
- Provides in-depth descriptions and directions for performing many data preparation operations necessary to generate data sets in the proper form and format for submission to modeling algorithms
- Features clear, intuitive explanations of standard analytical tools and techniques and their practical applications
- Provides a number of case studies to guide practitioners in the design of analytical applications to solve real-world problems in their data domain
- Offers valuable tutorials on the book webpage with step-by-step instructions on how to use suggested tools to build models
- Provides predictive insights into the rapidly expanding “Intelligence Age” as it takes over from the “Information Age,” enabling readers to easily transition the book’s content into the tools of the future
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Specificații
ISBN-13: 9780443158452
ISBN-10: 0443158452
Pagini: 650
Dimensiuni: 216 x 276 mm
Greutate: 0.45 kg
Ediția:3
Editura: ELSEVIER SCIENCE
ISBN-10: 0443158452
Pagini: 650
Dimensiuni: 216 x 276 mm
Greutate: 0.45 kg
Ediția:3
Editura: ELSEVIER SCIENCE
Cuprins
Part I – Introduction
1. Historical Background to Analytics
2. Theory
3. Data Mining and Predictive Analytic Process
4. Data Science Tool Types: Which one is Best?
Part II - Data Preparation
5. Data Access
6. Data Understanding
7. Data Visualization
8. Data Cleaning
9. Data Conditioning
10. Feature Engineering
11. Feature Selection
12. Data Preparation Cookbook
Part III – Modeling
13. Algorithms
14. Modeling
15. Model Evaluation and Enhancement
16. Ensembles & Complexity
17. Deep Learning vs. Traditional ML
18. Explainable AI (XAI) put after Deep Learning
19. Human in the Loop
Part IV - Applications
20. GENERAL OVERVIEW of an Application - Healthcare Delivery and Medical Informatics
21. Specific Application: Business: Customer Response
22. Specific Application: Education: Learning Analytics
23. Specific Application: Medical Informatics: Colon Cancer Screening
24. Specific Application: Financial: Credit Risk
25. Specific FUTURE Application: The ‘INTELLIGENCE AGE (Revolution)’: LLMs like ChatGPT - Tiny ML - H.U.M.A.N.E. - Etc.
Part V – Right Models – Luck - & Ethics of Analytics
26. Right Model for the Right Use
27. Ethics in Data Science
28. Significance of Luck
Part VI - Tutorials and Case Studies
Tutorial A Example of Data Mining Recipes Using Statistica Data Miner 13
Tutorial B Analysis of Hurricane Data (Hurrdata.sta) Using the Statistica Data Miner 13
Tutorial C Predicting Student Success at High-Stakes Nursing Examinations (NCLEX) Using SPSS Modeler and Statistica Data Miner 13
Tutorial D Constructing a Histogram Using MidWest Company Personality Data Using KNIME
Tutorial E Feature Selection Using KNIME
Tutorial F Medical/Business Tutorial Using Statistica Data Miner 13
Tutorial G A KNIME Exercise, Using Alzheimer’s Training Data of Tutorial F (RAN note: This tutorial refers to the data used in Tutorial I, and it should be changed to refer to Tutorial F. I propose a new title: Tutorial G Medical/Business Tutorial with Tutorial F Data Using KNIME.
Tutorial H Data Prep 1-1: Merging Data Sources Using KNIME
Tutorial I Data Prep 1–2: Data Description Using KNIME
Tutorial J Data Prep 2-1: Data Cleaning and Recoding Using KNIME
Tutorial K Data Prep 2-2: Dummy Coding Category Variables Using KNIME
Tutorial L Data Prep 2-3: Outlier Handling Using KNIME
Tutorial M Data Prep 3-1: Filling Missing Values With Constants Using KNIME
Tutorial N Data Prep 3-2: Filling Missing Values With Formulas Using KNIME
Tutorial O Data Prep 3-3: Filling Missing Values With a Model Using KNIME
Back Matter:
Appendix-A – Listing of TUTORIALS and other RESOUCES on this book’s COMPANION WEB PAGE
Appendix B – Instructions on HOW TO USE this book’s COMPANION WEB PAGE
1. Historical Background to Analytics
2. Theory
3. Data Mining and Predictive Analytic Process
4. Data Science Tool Types: Which one is Best?
Part II - Data Preparation
5. Data Access
6. Data Understanding
7. Data Visualization
8. Data Cleaning
9. Data Conditioning
10. Feature Engineering
11. Feature Selection
12. Data Preparation Cookbook
Part III – Modeling
13. Algorithms
14. Modeling
15. Model Evaluation and Enhancement
16. Ensembles & Complexity
17. Deep Learning vs. Traditional ML
18. Explainable AI (XAI) put after Deep Learning
19. Human in the Loop
Part IV - Applications
20. GENERAL OVERVIEW of an Application - Healthcare Delivery and Medical Informatics
21. Specific Application: Business: Customer Response
22. Specific Application: Education: Learning Analytics
23. Specific Application: Medical Informatics: Colon Cancer Screening
24. Specific Application: Financial: Credit Risk
25. Specific FUTURE Application: The ‘INTELLIGENCE AGE (Revolution)’: LLMs like ChatGPT - Tiny ML - H.U.M.A.N.E. - Etc.
Part V – Right Models – Luck - & Ethics of Analytics
26. Right Model for the Right Use
27. Ethics in Data Science
28. Significance of Luck
Part VI - Tutorials and Case Studies
Tutorial A Example of Data Mining Recipes Using Statistica Data Miner 13
Tutorial B Analysis of Hurricane Data (Hurrdata.sta) Using the Statistica Data Miner 13
Tutorial C Predicting Student Success at High-Stakes Nursing Examinations (NCLEX) Using SPSS Modeler and Statistica Data Miner 13
Tutorial D Constructing a Histogram Using MidWest Company Personality Data Using KNIME
Tutorial E Feature Selection Using KNIME
Tutorial F Medical/Business Tutorial Using Statistica Data Miner 13
Tutorial G A KNIME Exercise, Using Alzheimer’s Training Data of Tutorial F (RAN note: This tutorial refers to the data used in Tutorial I, and it should be changed to refer to Tutorial F. I propose a new title: Tutorial G Medical/Business Tutorial with Tutorial F Data Using KNIME.
Tutorial H Data Prep 1-1: Merging Data Sources Using KNIME
Tutorial I Data Prep 1–2: Data Description Using KNIME
Tutorial J Data Prep 2-1: Data Cleaning and Recoding Using KNIME
Tutorial K Data Prep 2-2: Dummy Coding Category Variables Using KNIME
Tutorial L Data Prep 2-3: Outlier Handling Using KNIME
Tutorial M Data Prep 3-1: Filling Missing Values With Constants Using KNIME
Tutorial N Data Prep 3-2: Filling Missing Values With Formulas Using KNIME
Tutorial O Data Prep 3-3: Filling Missing Values With a Model Using KNIME
Back Matter:
Appendix-A – Listing of TUTORIALS and other RESOUCES on this book’s COMPANION WEB PAGE
Appendix B – Instructions on HOW TO USE this book’s COMPANION WEB PAGE