
Foundations of Programming, Statistics, and Machine Learning for Business Analytics
Description
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This book covers all the fundamentals, from statistics to programming to business applications, to equip you with the solid foundational knowledge needed to progress in business analytics.
Assuming no prior knowledge of programming or statistics, this book takes a simple step-by-step approach which makes potentially intimidating topics easy to understand, by keeping Maths to a minimum and including examples of business analytics in practice.
Key features:
? Introduces programming fundamentals using R and Python
? Covers data structures, data management and manipulation and data visualization
? Includes interactive coding notebooks so that you can build up your programming skills progressively
Suitable as an essential text for undergraduate and postgraduate students studying Business Analytics or as pre-reading for students studying Data Science.
Ram Gopal is Pro-Dean and Professor of Information Systems at the University of Warwick.
Daniel Philps is an Artificial Intelligence Researcher and Head of Rothko Investment Strategies.
Tillman Weyde is Senior Lecturer at City, University of London.
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Content
Chapter 2: Summarizing And Visualizing Data
Chapter 3: Summarizing And Visualizing Data
Chapter 4: Programming Fundamentals
Chapter 5: Programming Fundamentals
Chapter 6: Distributions
Chapter 7: Statistical Testing - Concepts and Strategy
Chapter 8: Statistical Testing - Concepts and Strategy
Chapter 9: Nonparametric Tests
Chapter 10: Reality Check
Chapter 11: Fundamentals of Estimation
Chapter 12: Linear Models
Chapter 13: General Linear Models
Chapter 14: Regression Diagnostics And Structure
Chapter 15: Timeseries And Forecasting
Chapter 16: Introduction To Machine Learning
Chapter 17: Model Selection And Cross Validation
Chapter 18: Regression Models In Machine Learning
Chapter 19: Classification Models And Evaluation
Chapter 20: Automated Machine Learning
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File format: ePUB
Copy protection: Watermark-DRM (Digital Rights Management)
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