1 - 4
- Kordon, Arthur K., author aut http://id.loc.gov/vocabulary/relators/aut
- Cham, Switzerland : Springer, [2020]
- Description
- Book — 1 online resource (XXXII, 494 pages) : illustrations (some color)
- Summary
-
- Part I, From Business Problems to Data Science.- Data Science Based on Artificial Intelligence.- Business Problems Dependent on Data.- Artificial Intelligence-Based Data Science Solutions.- Integrate and Conquer.- The Lost-in-Translation Trap.- Part II, The AI-Based Data Science Toolbox.- The AI-Based Data Science Workflow.- Problem Knowledge Acquisition.- Data Preparation.- Data Analysis.- Model Development.- The Model Deployment Life Cycle.- Part III, AI-Based Data Science in Action.- Infrastructure.- People.- Applications of AI-Based Data Science in Manufacturing.- Applications of AI-Based Data Science in Business.- How to Operate AI-Based Data Science in a Business.- How to Become an Effective Data Scientist.- Glossary.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
- Kordon, Arthur K.
- Berlin ; London : Springer, 2009.
- Description
- Book — 1 online resource (xxii, 459 pages) : illustrations
- Summary
-
- Part I: Computational Intelligence for the Masses: Computational vs. Artificial Intelligence.- A Roadmap Through the Computational Intelligence Maze.- Fuzzy Systems: Let's Get Fuzzy.- Machine Learning: The Ghost in the Learning Machine.- Evolutionary Computation: The Profitable Gene.- Swarm Intelligence: The Benefits of the Swarms.- Intelligent Agents: The Computer Intelligence Agency (CIA).- Part II: Computational Intelligence Creates Value: Why We Need Intelligent Solutions?.- Competitive Advantages of Computational Intelligence.- Issues in Applying Computational Intelligence.- Part III: Computational Intelligence Application Strategy: Integrate & Conquer.- How to Apply Computational Intelligence?.- Computational Intelligence Marketing.- Examples of Computational Intelligence Industrial Applications.- Part IV: The Future of Applied Computational Intelligence: Future Directions of Applied Computational Intelligence.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
- Rey, Tim.
- Cary, N.C. : SAS Institute, 2012.
- Description
- Book — 1 online resource (x, 324 pages) : illustrations
- Summary
-
- Why industry needs data mining for forecasting
- Data mining for forecasting work process
- Data mining for forecasting infrastructure
- Issues with data mining for forecasting application
- Data collection
- Data preparation
- A practitioner's guide to DMM methods for forecasting
- Model building: ARMA models
- Model building: ARIMAX or dynamic regression modes
- Model building: further modeling topics
- Model building: alternative modeling approaches
- An example of data mining for forecasting.
- Cham : Springer, 2016.
- Description
- Book — 1 online resource (xx, 262 pages) : illustrations Digital: text file; PDF.
- Summary
-
- Evolving Simple Symbolic Regression Models by Multi-objective Genetic Programming.- Learning Heuristics for Mining RNA Sequence-Structure Motifs.- Kaizen Programming for Feature Construction for Classification.- GP as if You Meant It: An Exercise for Mindful Practice.- nPool: Massively Distributed Simultaneous Evolution and Cross-Validation in EC-Star.- Highly Accurate Symbolic Regression with Noisy Training Data.- Using Genetic Programming for Data Science: Lessons Learned.- The Evolution of Everything (EvE) and Genetic Programming.- Lexicase selection for program synthesis: a Diversity Analysis.- Using Graph Databases to Explore the Dynamics of Genetic Programming Runs.- Predicting Product Choice with Symbolic Regression and Classification.- Multiclass Classification Through Multidimensional Clustering.- Prime-Time: Symbolic Regression takes its place in the Real World.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
Articles+
Journal articles, e-books, & other e-resources
Guides
Course- and topic-based guides to collections, tools, and services.