LOSDD: Leave-Out Support Vector Data Description for Outlier Detection
This work addresses outlier detection in contaminated datasets for machine learning practitioners, offering an incremental improvement over existing SVM methods.
The paper tackles the problem of outlier detection in dirty training data where existing SVM-based methods perform poorly, and introduces a leave-out strategy that improves outlier scoring by temporarily omitting candidates, enabling iterative removal of outliers to address masking effects.
Support Vector Machines have been successfully used for one-class classification (OCSVM, SVDD) when trained on clean data, but they work much worse on dirty data: outliers present in the training data tend to become support vectors, and are hence considered "normal". In this article, we improve the effectiveness to detect outliers in dirty training data with a leave-out strategy: by temporarily omitting one candidate at a time, this point can be judged using the remaining data only. We show that this is more effective at scoring the outlierness of points than using the slack term of existing SVM-based approaches. Identified outliers can then be removed from the data, such that outliers hidden by other outliers can be identified, to reduce the problem of masking. Naively, this approach would require training N individual SVMs (and training $O(N^2)$ SVMs when iteratively removing the worst outliers one at a time), which is prohibitively expensive. We will discuss that only support vectors need to be considered in each step and that by reusing SVM parameters and weights, this incremental retraining can be accelerated substantially. By removing candidates in batches, we can further improve the processing time, although it obviously remains more costly than training a single SVM.