Ensemble learning for data stream analysis: A survey
In many applications of information systems learning algorithms have to act in dynamic
environments where data are collected in the form of transient data streams. Compared to …
environments where data are collected in the form of transient data streams. Compared to …
[책][B] An introduction to outlier analysis
CC Aggarwal, CC Aggarwal - 2017 - Springer
Outliers are also referred to as abnormalities, discordants, deviants, or anomalies in the data
mining and statistics literature. In most applications, the data is created by one or more …
mining and statistics literature. In most applications, the data is created by one or more …
A survey on learning from imbalanced data streams: taxonomy, challenges, empirical study, and reproducible experimental framework
Class imbalance poses new challenges when it comes to classifying data streams. Many
algorithms recently proposed in the literature tackle this problem using a variety of data …
algorithms recently proposed in the literature tackle this problem using a variety of data …
[책][B] Machine learning for data streams: with practical examples in MOA
A hands-on approach to tasks and techniques in data stream mining and real-time analytics,
with examples in MOA, a popular freely available open-source software framework. Today …
with examples in MOA, a popular freely available open-source software framework. Today …
Online ensemble learning of data streams with gradually evolved classes
Class evolution, the phenomenon of class emergence and disappearance, is an important
research topic for data stream mining. All previous studies implicitly regard class evolution …
research topic for data stream mining. All previous studies implicitly regard class evolution …
No free lunch theorem for concept drift detection in streaming data classification: A review
H Hu, M Kantardzic, TS Sethi - Wiley Interdisciplinary Reviews …, 2020 - Wiley Online Library
Many real‐world data mining applications have to deal with unlabeled streaming data. They
are unlabeled because the sheer volume of the stream makes it impractical to label a …
are unlabeled because the sheer volume of the stream makes it impractical to label a …
Analyzing rare event, anomaly, novelty and outlier detection terms under the supervised classification framework
In recent years, a variety of research areas have contributed to a set of related problems with
rare event, anomaly, novelty and outlier detection terms as the main actors. These multiple …
rare event, anomaly, novelty and outlier detection terms as the main actors. These multiple …
Semi-supervised classification on data streams with recurring concept drift and concept evolution
X Zheng, P Li, X Hu, K Yu - Knowledge-Based Systems, 2021 - Elsevier
Mining non-stationary stream is a challenging task due to its unique property of infinite
length and dynamic characteristics let alone the issues of concept drift, concept evolution …
length and dynamic characteristics let alone the issues of concept drift, concept evolution …
Activity recognition with evolving data streams: A review
ZS Abdallah, MM Gaber, B Srinivasan… - ACM Computing …, 2018 - dl.acm.org
Activity recognition aims to provide accurate and opportune information on people's
activities by leveraging sensory data available in today's sensory rich environments …
activities by leveraging sensory data available in today's sensory rich environments …
A multi-step outlier-based anomaly detection approach to network-wide traffic
Outlier detection is of considerable interest in fields such as physical sciences, medical
diagnosis, surveillance detection, fraud detection and network anomaly detection. The data …
diagnosis, surveillance detection, fraud detection and network anomaly detection. The data …