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Agile Machine Learning with DataRobot

You're reading from   Agile Machine Learning with DataRobot Automate each step of the machine learning life cycle, from understanding problems to delivering value

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Product type Paperback
Published in Dec 2021
Publisher Packt
ISBN-13 9781801076807
Length 344 pages
Edition 1st Edition
Languages
Concepts
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Authors (2):
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Bipin Chadha Bipin Chadha
Author Profile Icon Bipin Chadha
Bipin Chadha
Sylvester Juwe Sylvester Juwe
Author Profile Icon Sylvester Juwe
Sylvester Juwe
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Toc

Table of Contents (19) Chapters Close

Preface 1. Section 1: Foundations
2. Chapter 1: What Is DataRobot and Why You Need It? FREE CHAPTER 3. Chapter 2: Machine Learning Basics 4. Chapter 3: Understanding and Defining Business Problems 5. Section 2: Full ML Life Cycle with DataRobot: Concept to Value
6. Chapter 4: Preparing Data for DataRobot 7. Chapter 5: Exploratory Data Analysis with DataRobot 8. Chapter 6: Model Building with DataRobot 9. Chapter 7: Model Understanding and Explainability 10. Chapter 8: Model Scoring and Deployment 11. Section 3: Advanced Topics
12. Chapter 9: Forecasting and Time Series Modeling 13. Chapter 10: Recommender Systems 14. Chapter 11: Working with Geospatial Data, NLP, and Image Processing 15. Chapter 12: DataRobot Python API 16. Chapter 13: Model Governance and MLOps 17. Chapter 14: Conclusion 18. Other Books You May Enjoy

Addressing model bias and fairness

A key characteristic of ML lies in its learning from the past to predict the future. This implies that future predictions would be influenced by the past. Some training datasets are structured in ways that could introduce bias into ML models. These biases are based on unspoken unfairness evident in human systems. Bias is known to maintain prejudice and unfairness that preexisted the models and could lead to unintended consequences. An AI system that is unable to understand human bias mirrors, if not exacerbates, the bias present in the training dataset. It is easy to see why women are more likely to receive lower salary predictions by ML models than their male counterparts. In a similar example, credit card companies using historic data-driven ML models could be steered into offering higher rates to individuals from minority backgrounds. Such unwarranted associated are caused by human bias that is inherent in the training dataset. It is unfair to...

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