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Hands-On Machine Learning with ML.NET

You're reading from   Hands-On Machine Learning with ML.NET Getting started with Microsoft ML.NET to implement popular machine learning algorithms in C#

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Product type Paperback
Published in Mar 2020
Publisher Packt
ISBN-13 9781789801781
Length 296 pages
Edition 1st Edition
Languages
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Author (1):
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Jarred Capellman Jarred Capellman
Author Profile Icon Jarred Capellman
Jarred Capellman
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Table of Contents (19) Chapters Close

Preface 1. Section 1: Fundamentals of Machine Learning and ML.NET
2. Getting Started with Machine Learning and ML.NET FREE CHAPTER 3. Setting Up the ML.NET Environment 4. Section 2: ML.NET Models
5. Regression Model 6. Classification Model 7. Clustering Model 8. Anomaly Detection Model 9. Matrix Factorization Model 10. Section 3: Real-World Integrations with ML.NET
11. Using ML.NET with .NET Core and Forecasting 12. Using ML.NET with ASP.NET Core 13. Using ML.NET with UWP 14. Section 4: Extending ML.NET
15. Training and Building Production Models 16. Using TensorFlow with ML.NET 17. Using ONNX with ML.NET 18. Other Books You May Enjoy

Breaking down anomaly detection

As mentioned in Chapter 1, Getting Started with Machine Learning and ML.NET, anomaly detection, by definition, is an unsupervised learning algorithm. This means that the algorithm will train on data and look for data that does not fit the normal data. In this section, we will dive into use cases for anomaly detection and into the various trainers available for anomaly detection in ML.NET.

Use cases for anomaly detection

Anomaly detection, as you might have realized already, has numerous applications where data is available but it is unknown whether there is an anomaly in the data. Without needing to do manual spot-checking, anomaly detection algorithms train on this data and determine whether there are any anomalies. ML.NET provides various anomaly detection values to look at programmatically inside of your application. We will review these values later on in this chapter to better ensure that any detection is not a false positive.

Some of the potential...

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