RADE: resource-efficient supervised anomaly detection using decision tree-based ensemble methods
Autor: | Isaac Keslassy, Shay Vargaftik, Ariel Orda, Yaniv Ben-Itzhak |
---|---|
Rok vydání: | 2021 |
Předmět: |
Edge device
Computer science business.industry Decision tree Machine learning computer.software_genre Ensemble learning Resource (project management) Artificial Intelligence Classifier (linguistics) Memory footprint Key (cryptography) Anomaly detection Artificial intelligence business computer Software |
Zdroj: | Machine Learning. 110:2835-2866 |
ISSN: | 1573-0565 0885-6125 |
DOI: | 10.1007/s10994-021-06047-x |
Popis: | The capability to perform anomaly detection in a resource-constrained setting, such as an edge device or a loaded server, is of increasing need due to emerging on-premises computation constraints as well as security, privacy and profitability reasons. Yet, the increasing size of datasets often results in current anomaly detection methods being too resource consuming, and in particular decision-tree based ensemble classifiers. To address this need, we present RADE—a new resource-efficient anomaly detection framework that augments standard decision-tree based ensemble classifiers to perform well in a resource constrained setting. The key idea behind RADE is first to train a small model that is sufficient to correctly classify the majority of the queries. Then, using only subsets of the training data, train expert models for these fewer harder cases where the small model is at high risk of making a classification mistake. We implement RADE as a scikit-learn classifier. Our evaluation indicates that RADE offers competitive anomaly detection capabilities as compared to standard methods while significantly improving memory footprint by up to $$12\times $$ , training-time by up to $$20\times $$ , and classification time by up to $$16\times $$ . |
Databáze: | OpenAIRE |
Externí odkaz: |