Anomaly Detection using Principles of Human Perception
Nassir Mohammad

TL;DR
This paper introduces a novel, perception-inspired anomaly detection algorithm based on Gestalt principles, offering a simple, real-time, parameter-free method that performs well on univariate and multivariate data.
Contribution
It provides a clear philosophical definition of anomalies and develops a new detection algorithm grounded in human perception principles, with minimal user intervention.
Findings
Effective on univariate data
Promising results on multivariate global anomalies
Simple, real-time, parameter-free algorithm
Abstract
In the fields of statistics and unsupervised machine learning a fundamental and well-studied problem is anomaly detection. Anomalies are difficult to define, yet many algorithms have been proposed. Underlying the approaches is the nebulous understanding that anomalies are rare, unusual or inconsistent with the majority of data. The present work provides a philosophical treatise to clearly define anomalies and develops an algorithm for their efficient detection with minimal user intervention. Inspired by the Gestalt School of Psychology and the Helmholtz principle of human perception, anomalies are assumed to be observations that are unexpected to occur with respect to certain groupings made by the majority of the data. Under appropriate random variable modelling anomalies are directly found in a set of data by a uniform and independent random assumption of the distribution of…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Advanced Statistical Methods and Models · Time Series Analysis and Forecasting
