Autoencoder-based Anomaly Detection in Streaming Data with Incremental Learning and Concept Drift Adaptation

05/15/2023
by   Jin Li, et al.
0

In our digital universe nowadays, enormous amount of data are produced in a streaming manner in a variety of application areas. These data are often unlabelled. In this case, identifying infrequent events, such as anomalies, poses a great challenge. This problem becomes even more difficult in non-stationary environments, which can cause deterioration of the predictive performance of a model. To address the above challenges, the paper proposes an autoencoder-based incremental learning method with drift detection (strAEm++DD). Our proposed method strAEm++DD leverages on the advantages of both incremental learning and drift detection. We conduct an experimental study using real-world and synthetic datasets with severe or extreme class imbalance, and provide an empirical analysis of strAEm++DD. We further conduct a comparative study, showing that the proposed method significantly outperforms existing baseline and advanced methods.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
11/23/2022

Unsupervised Unlearning of Concept Drift with Autoencoders

The phenomena of concept drift refers to a change of the data distributi...
research
06/07/2021

MemStream: Memory-Based Anomaly Detection in Multi-Aspect Streams with Concept Drift

Given a stream of entries over time in a multi-aspect data setting where...
research
10/11/2022

InQMAD: Incremental Quantum Measurement Anomaly Detection

Streaming anomaly detection refers to the problem of detecting anomalous...
research
10/10/2022

A Hybrid Active-Passive Approach to Imbalanced Nonstationary Data Stream Classification

In real-world applications, the process generating the data might suffer...
research
11/26/2020

Comparative Analysis of Extreme Verification Latency Learning Algorithms

One of the more challenging real-world problems in computational intelli...
research
07/27/2022

Concept Drift Challenge in Multimedia Anomaly Detection: A Case Study with Facial Datasets

Anomaly detection in multimedia datasets is a widely studied area. Yet, ...
research
09/20/2020

Instance exploitation for learning temporary concepts from sparsely labeled drifting data streams

Continual learning from streaming data sources becomes more and more pop...

Please sign up or login with your details

Forgot password? Click here to reset