H Guo, H Li, Q Ren, W Wang - Information Sciences, 2022 - Elsevier
Abstract Concept drift is a common and important issue in streaming data analysis and mining. Thus far, many concept drift detection methods have been proposed but may not be …
Detection of anomalous behaviors in data centers is crucial to predictive maintenance and data safety. With data centers, we mean any computer network that allows users to transmit …
P Wang, N Jin, WL Woo, JR Woodward, D Davies - Information Sciences, 2022 - Elsevier
Drift detection methods identify changes in data streams. Such changes are called concept drifts. Existing drift detection methods often assume that the input is a noise-free data stream …
E Lughofer - Information sciences, 2021 - Elsevier
During the last 15 to 20 years, evolving (neuro-) fuzzy systems (E (N) FS) have enjoyed more and more attraction in the context of data stream mining and modeling processes. This …
Evolving classifiers and especially evolving fuzzy classifiers have been established as a prominent technique for addressing the recent demands in building classifiers in an …
This paper proposes a hybrid architecture based on neural networks, fuzzy systems, and n- uninorms for solving pattern classification problems, termed as ENFS-Uni0 (short for …
Big Data advancements motivate researchers to develop and improve intelligent models to deal efficiently and effectively with data. In this scenario, time series forecasting obtains even …
E Lughofer - Information Sciences, 2022 - Elsevier
Multi-label classification has attracted much attention in the machine learning community to address the problem of assigning single samples to more than one (not necessarily non …
This article presents a new design of experiment approach based on an evolving neuro- fuzzy model. The input of the process is proposed by a space-filling method that uses a …