Practical Machine Learning: A New Look at Anomaly Detection
- Length: 66 pages
- Edition: 1
- Language: English
- Publisher: O'Reilly Media
- Publication Date: 2014-09-06
- ISBN-10: 1491911603
- ISBN-13: 9781491911600
- Sales Rank: #2714875 (See Top 100 Books)
Finding Data Anomalies You Didn’t Know to Look For
Anomaly detection is the detective work of machine learning: finding the unusual, catching the fraud, discovering strange activity in large and complex datasets. But, unlike Sherlock Holmes, you may not know what the puzzle is, much less what “suspects” you’re looking for. This O’Reilly report uses practical examples to explain how the underlying concepts of anomaly detection work.
From banking security to natural sciences, medicine, and marketing, anomaly detection has many useful applications in this age of big data. And the search for anomalies will intensify once the Internet of Things spawns even more new types of data. The concepts described in this report will help you tackle anomaly detection in your own project.
- Use probabilistic models to predict what’s normal and contrast that to what you observe
- Set an adaptive threshold to determine which data falls outside of the normal range, using the t-digest algorithm
- Establish normal fluctuations in complex systems and signals (such as an EKG) with a more adaptive probablistic model
- Use historical data to discover anomalies in sporadic event streams, such as web traffic
- Learn how to use deviations in expected behavior to trigger fraud alerts
Table of Contents
Chapter 1. Looking Toward the Future
Chapter 2. The Shape of Anomaly Detection
Chapter 3. Using t-Digest for Threshold Automation
Chapter 4. More Complex, Adaptive Models
Chapter 5. Anomalies in Sporadic Events
Chapter 6. No Phishing Allowed!
Chapter 7. Anomaly Detection for the Future
Appendix A. Additional Resources