Difference between revisions of "One-class Support Vector Machine (SVM)"
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* [[Support Vector Machine (SVM)]] | * [[Support Vector Machine (SVM)]] | ||
* [[Support Vector Regression (SVR)]] | * [[Support Vector Regression (SVR)]] | ||
Revision as of 15:47, 2 June 2018
- AI Solver
- Support Vector Machine (SVM)
- Support Vector Regression (SVR)
- Enhancing One-class Support Vector Machines for Unsupervised Anomaly Detection | Mennatallah Amer, Markus Goldstein, Slim Abdennadher
- hawkEye: A Real-time Anomaly Detection System | Satnam Singh
- One-Class Support Vector Machine | Microsoft
Useful in scenarios where you have a lot of "normal" data and not many cases of the anomalies you are trying to detect. For example, if you need to detect fraudulent transactions, you might not have many examples of fraud that you could use to train a typical classification model, but you might have many examples of good transactions. You use the One-Class Support Vector Model module to create the model, and then train the model using the Train Anomaly Detection Model.