+353-1-416-8900REST OF WORLD
+44-20-3973-8888REST OF WORLD
1-917-300-0470EAST COAST U.S
1-800-526-8630U.S. (TOLL FREE)

Meta-Analytics. Consensus Approaches and System Patterns for Data Analysis

  • Book

  • March 2019
  • Elsevier Science and Technology
  • ID: 4720856

Meta-Analytics: Consensus Approaches and System Patterns for Data Analysis presents an exhaustive set of patterns for data science to use on any machine learning based data analysis task. The book virtually ensures that at least one pattern will lead to better overall system behavior than the use of traditional analytics approaches. The book is 'meta' to analytics, covering general analytics in sufficient detail for readers to engage with, and understand, hybrid or meta- approaches. The book has relevance to machine translation, robotics, biological and social sciences, medical and healthcare informatics, economics, business and finance.

Inn addition, the analytics within can be applied to predictive algorithms for everyone from police departments to sports analysts.

Please Note: This is an On Demand product, delivery may take up to 11 working days after payment has been received.

Table of Contents

1. Ground truthing
2. Experiment design
3. Meta-Analytic design patterns
4. Sensitivity analysis and big system engineering
5. Multi-path predictive selection
6. Modeling and model fitting: including Antibody model, stem-differentiated cell model, and chemical, physical and environmental models for greater diversity in form
7. Synonym-antonym and Reinforce-Void patterns and their value in data consensus, data anonymization, and data normalization
8. Meta-analytics as analytics around analytics (functional metrics, entropy, EM). Ingesting statistical approaches for specific domains and generalizing them for data hybrid systems
9. System design optimization (entropy, error variance, coupling minimization F-score)
10. Aleatory techniques/expert system techniques.tie to ground truthing and error testing
11. Applications: machine translation, robotics, biological and social sciences, medical and healthcare informatics, economics, business and finance
12. Discussion and Conclusions, and the Future of Data

Authors

Steven Simske HP Fellow and Director, HP Labs, HP Inc, CO, USA. Steven J Simske is HP Fellow and Director at Hewlett Packard Labs, and has worked in machine intelligence and analytics for the past 25 years, with domains extending from medical image analytics to text summarization. He has performed research relevant to meta analytics for over 20 years at HP Labs, and in collaboration with major universities in the US and Brazil.