Litcius/Paper detail

Anomaly Detection on Event Logs with a Scarcity of Labels

Sylvio Barbon, Paolo Ceravolo, Ernesto Damiani, Nicolas Jashchenko Omori, Gabriel Marques Tavares

202039 citationsDOIOpen Access PDF

Abstract

Assuring anomaly-free business process executions is a key challenge for many organizations. Traditional techniques address this challenge using prior knowledge about anomalous cases that is seldom available in real-life. In this work, we propose the usage of word2vec encoding and One-Class Classification algorithms to detect anomalies by relying on normal behavior only. We investigated 6 different types of anomalies over 38 real and synthetics event logs, comparing the predictive performance of Support Vector Machine, One-Class Support Vector Machine, and Local Outlier Factor. Results show that our technique is viable for real-life scenarios, overcoming traditional machine learning for a wide variety of settings where only the normal behavior can be labeled.

Topics & Concepts

Anomaly detectionComputer scienceSupport vector machineEvent (particle physics)Word2vecMachine learningArtificial intelligenceClass (philosophy)OutlierProcess (computing)Data miningAnomaly (physics)Key (lock)Computer securityEmbeddingPhysicsQuantum mechanicsOperating systemCondensed matter physicsAnomaly Detection Techniques and ApplicationsSoftware System Performance and ReliabilityNetwork Security and Intrusion Detection
Anomaly Detection on Event Logs with a Scarcity of Labels | Litcius