Meta-Analytics: Consensus Approaches and System Patterns for Data Analysis
Autor Steven Simskeen Limba Engleză Paperback – 13 mar 2019
Inn addition, the analytics within can be applied to predictive algorithms for everyone from police departments to sports analysts.
- Provides comprehensive and systematic coverage of machine learning-based data analysis tasks
- Enables rapid progress towards competency in data analysis techniques
- Gives exhaustive and widely applicable patterns for use by data scientists
- Covers hybrid or ‘meta’ approaches, along with general analytics
- Lays out information and practical guidance on data analysis for practitioners working across all sectors
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Specificații
ISBN-13: 9780128146231
ISBN-10: 0128146230
Pagini: 340
Dimensiuni: 191 x 235 x 22 mm
Greutate: 0.59 kg
Editura: ELSEVIER SCIENCE
ISBN-10: 0128146230
Pagini: 340
Dimensiuni: 191 x 235 x 22 mm
Greutate: 0.59 kg
Editura: ELSEVIER SCIENCE
Public țintă
Data scientists in all sectors: academia, industry, government and NGO; engineering students, computer science students, engineers; computer scientists, researchers, analytics engineers, intelligent system designers, data mining professionals, robust learning system professionals of all job descriptions.Cuprins
1. Ground truthing2. Experiment design3. Meta-Analytic design patterns4. Sensitivity analysis and big system engineering5. Multi-path predictive selection6. Modeling and model fitting: including Antibody model, stem-differentiated cell model, and chemical, physical and environmental models for greater diversity in form7. Synonym-antonym and Reinforce-Void patterns and their value in data consensus, data anonymization, and data normalization8. Meta-analytics as analytics around analytics (functional metrics, entropy, EM). Ingesting statistical approaches for specific domains and generalizing them for data hybrid systems9. System design optimization (entropy, error variance, coupling minimization F-score)10. Aleatory techniques/expert system techniques…tie to ground truthing and error testing11. Applications: machine translation, robotics, biological and social sciences, medical and healthcare informatics, economics, business and finance12. Discussion and Conclusions, and the Future of Data