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Machine Learning with the Elastic Stack - Second Edition

You're reading from  Machine Learning with the Elastic Stack - Second Edition

Product type Book
Published in May 2021
Publisher Packt
ISBN-13 9781801070034
Pages 450 pages
Edition 2nd Edition
Languages
Authors (3):
Rich Collier Rich Collier
Profile icon Rich Collier
Camilla Montonen Camilla Montonen
Profile icon Camilla Montonen
Bahaaldine Azarmi Bahaaldine Azarmi
Profile icon Bahaaldine Azarmi
View More author details

Table of Contents (19) Chapters

Preface 1. Section 1 – Getting Started with Machine Learning with Elastic Stack
2. Chapter 1: Machine Learning for IT 3. Chapter 2: Enabling and Operationalization 4. Section 2 – Time Series Analysis – Anomaly Detection and Forecasting
5. Chapter 3: Anomaly Detection 6. Chapter 4: Forecasting 7. Chapter 5: Interpreting Results 8. Chapter 6: Alerting on ML Analysis 9. Chapter 7: AIOps and Root Cause Analysis 10. Chapter 8: Anomaly Detection in Other Elastic Stack Apps 11. Section 3 – Data Frame Analysis
12. Chapter 9: Introducing Data Frame Analytics 13. Chapter 10: Outlier Detection 14. Chapter 11: Classification Analysis 15. Chapter 12: Regression 16. Chapter 13: Inference 17. Other Books You May Enjoy Appendix: Anomaly Detection Tips

Hyperparameter tuning for outlier detection

For the more advanced user, the Data Frame Analytics wizard offers an opportunity to configure and tune hyperparameters – various knobs and dials that fine-tune how the outlier detection algorithm works. The available hyperparameters are displayed in Figure 10.17. For example, we can direct the outlier detection job to use only a certain type of outlier detection method instead of the ensemble, to use a certain value for the number of nearest neighbors that are used in the computation in the ensemble, and to assume that a certain portion of the data is outlying.

Please note that while it is good to play around with these settings to experiment and get a feel for how they affect the final results, if you want to customize any of these for a production usecase, you should carefully study the characteristics of your data and have an awareness of how these characteristics will interact with your chosen hyperparameter settings. More...

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