ISBN-13: 9789811500961 / Angielski / Miękka / 2020 / 412 str.
ISBN-13: 9789811500961 / Angielski / Miękka / 2020 / 412 str.
Table of contents:
Preface
Chapter 1 Big Data
1.1 Introduction
1.2 What is Big Data?
1.3 Disruptive change and paradigm shift and its business meaning
1.4 HADOOP
1.4.1 Silos1.4.2 Big Bang of Big Data
1.4.3 Possibilities
1.4.4 Future
1.4.5 Parallel processing for problem solving
1.4.6 Why Hadoop?1.4.7 Hadoop and HDFS
1.4.8 Hadoop Version 1.0 & 2.0
1.4.8.1 Limitations of Hadoop 1.0
1.4.9 Hadoop 2.0
1.5 HDFS Overview
1.5.1 Map Reduce framework
1.5.2 Job Tracker
1.5.3 YARN
1.6 Hadoop Eco System
1.6.1 Cloud based Hadoop Solutions
1.6.2 SPARK and Data Stream Processing
1.7 Decision Making and Data Analysis in the Context of Big Data Environment
1.7.1 Present Day Data Analytics Techniques
1.8 Machine Learning Algorithms
1.9 Evolutionary Computing (EC)Conclusion
Review Questions
References
Chapter 2: Intelligent Systems
2.1 Introduction2.2 Machine Learning Paradigms
2.2.1 Open Source Data Science
2.2.2 Machine Intelligence and Computational Intelligence
2.2.3 Data Engineering and Data Sciences
2.3 Machine Learning Paradigms
2.4 Big Data Computing
2.4.1 Distributed Systems and Database Systems
2.4.2 Data Stream Systems and Stream Mining2.4.3 Ubiquitous Computing Infrastructures
Conclusion
Review Questions
References
Chapter 3: Predictive Modeling for Unstructured Data
3.1 Introduction
3.2 Applications of Predictive Modeling
3.3 Feature Engineering
3.4 Pattern Mining for Predictive Modeling
Conclusion
Review Questions
References
Chapter 4: Machine Learning Algorithms for Big Data
4.1 Introduction
4.2 Generative vs Discriminative Algorithms
4.3 Supervised Learning for Big Data
4.3.1 Decision Trees
4.3.2 Logistic Regression4.3.3 Regression and Forecasting
4.3.4 Supervised Neural Networks
4.3.5 Support Vector Machines
4.4 Unsupervised Learning for Big Data
4.4.1 Spectral Clustering4.4.2 Principal Component Analysis (PCA)
4.4.3 Latent Dirichlet Allocation (LDA)
4.4.4 Matrix Factorization
4.4.5 Manifold Learning
4.5 Semi-Supervised Learning for Big Data
4.5.1 Co-training
4.5.2 Label Propagation
4.5.3 Multi-View Learning4.6 Reinforcement Learning Basics for Big Data
4.6.1 Markov Decision Process4.6.2 Planning
4.6.3 RL in practice
4.7 Online Learning for Big Data
Conclusion
Review Questions
References
Chapter 5: Analytics Models for Data Science
5.1 Introduction5.2 Data Models
5.2.1 Data Products
5.2.2 Data Munging
5.2.3 Descriptive Analytics
5.2.4 Predictive Analytics
5.2.5 Data Science
5.2.6 Network Science
5.3 Computing Models5.3.1 Data Structures for Big Data
5.3.2 Feature Engineering for Structured Data
5.3.2.1 Feature Construction
5.3.2.2 Feature Extraction
5.3.2.3 Feature Selection
5.3.2.4 Feature Learning
5.3.2.5 Ensemble Learning
5.3.3 Computational Algorithmics
5.4 Programming Models5.4.1 Parallel Programming
5.4.2 Functional Programming
5.4.3 Distributed Programming
Conclusion
Review Questions
References
Chapter 6: Social Semantic Web Mining and Big Data Analytics
6.1 Introduction
6.2 What is Semantic Web?
6.3 Knowledge Representation Techniques and Platforms in Semantic Web
6.4 Web Ontology Language (OWL)
6.5 Object Knowledge Model (OKM)
6.6 Ontology6.7 Architecture of Semantic Web and the Semantic Web Road Map
6.8 Social Semantic Web Mining
6.9 Conceptual Networks and Folksonomies or Folk Taxonomies of Concepts/Sub Concepts
6.10 SNA and ABM
6.11 e-Social Science
6.12 Opinion Mining and Sentiment Analysis
Conclusion
Review Questions
References
Chapter 7: Internet of Things (IoT) and Big Data Analytics
7.1 Introduction
7.2 Smart Cities and IOT Sectoral Applications
7.3 Stages of IOT And Stakeholders
7.3.1 Stages of IOT
7.3.2 Stakeholders
7.3.3 Practical Down Scaling7.4 Analytics
7.4.1 Analytics from the Edge to Cloud
7.5 Access
7.6 Cost Reduction
7.7 Opportunities and Business Model
7.8 Content and Semantics
7.9 Data base Business models coming out of IOT
7.10 Future of IOT
7.10.1 Technology Drivers
7.10.2 Future possibilities
7.10.3 Challenges and Concerns
7.11 Big Data Analytics and IOT
7.11.1 Infrastructure for integration of Big Data with IoT
7.12 Fog Computing and Fog Analytics
7.13 Research Trends
Conclusion
Review Questions
References
Chapter 8: Big Data Analytics for Financial Services and Banking
8.1 Introduction
8.2 Customer Insights and Marketing Analysis8.3 Sentiment Analysis for consolidating customer feedback.
8.4 Predictive Analytics for capitalizing on customer insights
8.5 Model building
8.6 Fraud detection and Risk management
8.7 Integration of Big Data Analytics into operations.
8.8 How banks can benefit from Big Data Analytics?
8.9 Best practices of Data Analytics in banking for crises redressal and management
8.10 Bottlenecks
Conclusion
Review Questions
References
Chapter 9: Big Data Analytics Techniques in Capital Market Use Cases
9.1 Introduction
9.2 Capital Market Use Cases of Big Data Technologies
9.2.1 Algorithmic Trading
9.2.2 Investors’ Faster Access to Securities
9.3 Prediction Algorithms
9.3.1 Stock Market Prediction9.3.2 Efficient Market Hypothesis
9.3.3 Random Walk Theory (RWT)
9.3.4 Trading Philosophies
9.3.5 Simulation Techniques
9.4 Research Experiments to determine threshold time for determining predictability9.5 Experimental Analysis using Bag of Words and Support Vector Machine (SVM) Application to News Articles
9.6 Textual Representation and Analysis of News Articles9.7 Named Entities
9.8 Object Knowledge Model (OKM)
9.9 Application of Machine Learning Algorithms
9.9.1 Sources of Data
9.10 Future Work
Conclusion
Review Questions
References
Chapter 10: Big Data Analytics for Insurance
10.1 Introduction
10.2 The Insurance Business Scenario
10.3 Big Data Deployment in Insurance
10.4 Insurance Use Cases
10.5 Customer Needs Analysis
10.6 Other Applications
Conclusion
Review Questions
References
Chapter 11: Security in Big Data
11.1 Introduction
11.2 Ills of Social Networking – Identity Theft
11.3 Organizational Big Data Security
11.4 Security in Hadoop
11.5 Issues and Challenges in Big Data Security
11.6 Encryption for Security
11.7 Secure Map -Reduce and Log Management
11.8 Access Control, Differential Privacy and Third Party Authentication
11.9 Real Time Access Control
11.10 Security Best Practices for Non-Relational Or NoSQL Databases 11.11 Challenges, Issues and New Approaches
11.12 Research Overview and New Approaches for Security Issues in Big Data
Conclusion
Review Questions
References
Chapter 12: Privacy and Big Data Analytics
12.1 Introduction
12.2 Privacy Protection
12.3 Enterprise Big Data Privacy Policy And COBIT
12.4 Assurance and Governance
12.5 Challenges, Issues and Approaches For Privacy Protection
Conclusion
Review Questions
References
Chapter 13: Emerging Trends in Big Data
13.1 Learning to Generate
13.1.1 Unstructured Data
13.1.2 Structured Data
13.1.3 Multi-agent Environments13.2 Learning to Learn
13.2.1 Model Selection
13.2.2 Bayesian Optimization
13.2.3 Transfer Learning
13.3 Adversarial Learning
13.3.1 Anomaly Detection
13.3.2 Concept Drift
13.3.3 Adversarial Networks
13.4 Complex Networks
13.3.1 Graph Databases
13.3.2 Knowledge Graphs
13.3.3 Event Mining
13.3.3 Dynamic Network Analysis
Conclusion
Review Questions
References
Case Studies
1. Google
2. General Electric3. Microsoft
4. Nokia
5. Facebook
6. OPower7. Kaggle
8. Deutsche Bank
9. Health Sector Analysis
10. Online Insurance11. Delta Airlines
12. Linked.In
13. Traffic Management
14. CISCO
Appendix 1: Databases for Big Data: NoSQL Databases Column Databases and Graph Databases
Appendix 2: HDFS and MapReduce
Appendix 3: Statistical Foundations
Appendix 4: Probability, Random variables and mathematical expectation
Appendix 5: R Language Features and Its Applications in Machine Learning (Clustering,
Classification and Regression)
Appendix 6: Spark and Scala for data streams
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