학술논문

Qualitative Analysis of Anomaly Detection in Time Series
Document Type
Conference
Source
2022 4th International Conference on Circuits, Control, Communication and Computing (I4C) Circuits, Control, Communication and Computing (I4C), 2022 4th International Conference on. :250-253 Dec, 2022
Subject
Communication, Networking and Broadcast Technologies
Components, Circuits, Devices and Systems
Computing and Processing
Robotics and Control Systems
Ergonomics
Time series analysis
Weather forecasting
Forestry
Predictive models
Prediction algorithms
Feature extraction
anomaly detection
time-series analysis
payment fraud detection
alert system
interpretable machine learning
automated machine learning
unsupervised learning
data mining
Language
Abstract
We present an end-end system for time series anomaly detection specifically aimed at detecting fraudulent transactions in bank transaction datasets. The goal of anomaly detection is to locate unusual or uncommon occurrences in data. Outlier detection, one of the most crucial data analysis jobs, has many practical uses. For instance, in order to track their company data and send out notifications for outliers, Yahoo and Microsoft have developed their own services for time-series outlier identification. However, majority of outlier identification methods employ classifications of unusual entries without providing any justification. Therefore, the goal is to make the anomalous points as predicted by the model more interpretable and thereby create a flagging system to help human labelers in determining anomalous behavior. This will help reduce human engineering efforts by a huge margin.