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Machine Learning in Biotechnology and Life Sciences

You're reading from   Machine Learning in Biotechnology and Life Sciences Build machine learning models using Python and deploy them on the cloud

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Product type Paperback
Published in Jan 2022
Publisher Packt
ISBN-13 9781801811910
Length 408 pages
Edition 1st Edition
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Author (1):
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Saleh Alkhalifa Saleh Alkhalifa
Author Profile Icon Saleh Alkhalifa
Saleh Alkhalifa
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Table of Contents (17) Chapters Close

Preface 1. Section 1: Getting Started with Data
2. Chapter 1: Introducing Machine Learning for Biotechnology FREE CHAPTER 3. Chapter 2: Introducing Python and the Command Line 4. Chapter 3: Getting Started with SQL and Relational Databases 5. Chapter 4: Visualizing Data with Python 6. Section 2: Developing and Training Models
7. Chapter 5: Understanding Machine Learning 8. Chapter 6: Unsupervised Machine Learning 9. Chapter 7: Supervised Machine Learning 10. Chapter 8: Understanding Deep Learning 11. Chapter 9: Natural Language Processing 12. Chapter 10: Exploring Time Series Analysis 13. Section 3: Deploying Models to Users
14. Chapter 11: Deploying Models with Flask Applications 15. Chapter 12: Deploying Applications to the Cloud 16. Other Books You May Enjoy

Measuring success in supervised machine learning

As we begin to train our supervised classifiers and regressors, we will need to implement a few ways to determine which models are performing better, thus allowing us to effectively tune the model's parameters and maximize its performance. The best way to achieve this is to understand what success looks like ahead of time before diving into the model development process. There are many different methods for measuring success depending on the situation. For example, accuracy can be a good metric for classifiers, but not regressors. Similarly, a business case for a classifier may not necessarily require accuracy to be the primary metric of interest. It simply depends on the situation at hand. Let's take a look at some of the most common metrics used for each of the fields of classification and regression.

Figure 7.2 – Common success metrics for regression and classification

Although there are many...

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