Data Science for Business and Decision Making : an introductory Text for Students and Practitioners /
Huvudupphovsman: | |
---|---|
Materialtyp: | Licensed eBooks |
Språk: | engelska |
Publicerad: |
[Ashland] :
Arcler Press,
2020.
|
Länkar: | https://search.ebscohost.com/login.aspx?direct=true&scope=site&db=nlebk&AN=2725214 |
Innehållsförteckning:
- Cover
- Title Page
- Copyright
- ABOUT THE AUTHOR
- TABLE OF CONTENTS
- List of Figures
- List of Abbreviations
- Preface
- Chapter 1 Introduction to Data Science
- 1.1. The Scientific Method And Processes
- 1.2. Knowledge Extraction Using Algorithms
- 1.3. Insights Into Structured And Unstructured Data
- 1.4. Data Mining And Big Data
- 1.5. Use Of Hardware And Software Systems
- Chapter 1: Summary
- Chapter 2 Peripatetic And Amalgamated Uses of Methodologies
- 2.1. Statistical Components In Data Science
- 2.2. Analytical Pathways For Business Data
- 2.3. Machine Learning (Ml) As A New Pathway
- 2.4. The Use Of Data-Driven Science
- 2.5. Empirical, Theoretical, And Computational Underpinnings
- Chapter 2: Summary
- Chapter 3 The Changing Face of Data Science
- 3.1. Introduction Of Information Technology
- 3.2. The Data Deluge
- 3.3. Database Management Techniques
- 3.4. Distributed And Parallel Systems
- 3.5. Business Analytics (BA), Intelligence, And Predictive Modeling
- Chapter 3: Summary
- Chapter 4 Statistical Applications of Data Science
- 4.1. Public Sector Uses of Data Science
- 4.2. Data as a Competitive Advantage
- 4.3. Data Engineering Practices
- 4.4. Applied Data Science
- 4.5. Predictive and Explanatory Theories of Data Science
- Chapter 4: Summary
- Chapter 5 The Future of Data Science
- 5.1. Increased Usage of Open Science
- 5.2. Co-Production And Co-Consumption of Data Science
- 5.3. Better Reproducibility of Data Science
- 5.4. Transparency In The Production And Use of Data Science
- 5.5. Changing Research Paradigms In Academia
- Chapter 5: Summary
- Chapter 6 The Data Science Curriculum
- 6.1. Advanced Probability And Statistical Techniques
- 6.2. Software Packages Such As Microsoft Excel And Python
- 6.3. Social Statistics And Social Enterprise
- 6.4. Computational Competence For Business Leaders
- 6.5. The Language Of Data Science
- Chapter 6: Summary
- Chapter 7 Ethical Considerations in Data Science
- 7.1. Data Protection And Privacy
- 7.2. Informed Consent And Primary Usage
- 7.3. Data Storage And Security
- 7.4. Data Quality Controls
- 7.5. Business Secrets And Political Interference
- Chapter 7: Summary
- Chapter 8 How Data Science Supports Business Decision-Making
- 8.1. Opening Up The Perspective Of The Decision Maker
- 8.2. Properly Evaluating Feasible Options
- 8.3. Justification Of Decisions
- 8.4. Maintaining Records Of Decision Rationale
- 8.5. Less Subjectivity And More Objectivity In Decision-Making
- Chapter 8: Summary
- Concluding Remarks
- Bibliography
- Index
- Back Cover