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A survey of ensemble learning: Concepts, algorithms, applications, and prospects
Ensemble learning techniques have achieved state-of-the-art performance in diverse
machine learning applications by combining the predictions from two or more base models …
machine learning applications by combining the predictions from two or more base models …
Detecting phishing domains using machine learning
S Alnemari, M Alshammari - Applied Sciences, 2023 - mdpi.com
Phishing is an online threat where an attacker impersonates an authentic and trustworthy
organization to obtain sensitive information from a victim. One example of such is trolling …
organization to obtain sensitive information from a victim. One example of such is trolling …
Data stream classification based on extreme learning machine: a review
X Zheng, P Li, X Wu - Big Data Research, 2022 - Elsevier
Many daily applications are generating massive amount of data in the form of stream at an
ever higher speed, such as medical data, clicking stream, internet record and banking …
ever higher speed, such as medical data, clicking stream, internet record and banking …
The effect of training and testing process on machine learning in biomedical datasets
Training and testing process for the classification of biomedical datasets in machine learning
is very important. The researcher should choose carefully the methods that should be used …
is very important. The researcher should choose carefully the methods that should be used …
Kappa updated ensemble for drifting data stream mining
Learning from data streams in the presence of concept drift is among the biggest challenges
of contemporary machine learning. Algorithms designed for such scenarios must take into …
of contemporary machine learning. Algorithms designed for such scenarios must take into …
Online active learning for drifting data streams
Classification methods for streaming data are not new, but very few current frameworks
address all three of the most common problems with these tasks: concept drift, noise, and …
address all three of the most common problems with these tasks: concept drift, noise, and …
A survey of active and passive concept drift handling methods
M Han, Z Chen, M Li, H Wu… - Computational …, 2022 - Wiley Online Library
At present, concept drift in the nonstationary data stream is showing trends with different
speeds and different degrees of severity, which has brought great challenges to many fields …
speeds and different degrees of severity, which has brought great challenges to many fields …
Determining the extinguishing status of fuel flames with sound wave by machine learning methods
Fire is a natural disaster that can be caused by many different reasons. Recently, more
environmentally friendly and innovative extinguishing methods have started to be tested …
environmentally friendly and innovative extinguishing methods have started to be tested …
[HTML][HTML] Towards an optimal KELM using the PSO-BOA optimization strategy with applications in data classification
Y Yue, L Cao, H Chen, Y Chen, Z Su - Biomimetics, 2023 - mdpi.com
The features of the kernel extreme learning machine—efficient processing, improved
performance, and less human parameter setting—have allowed it to be effectively used to …
performance, and less human parameter setting—have allowed it to be effectively used to …
Forecasting in non-stationary environments with fuzzy time series
Time series arise in many fields of science such as engineering, economy and agriculture to
cite a few. In the early 1990's the so called Fuzzy Time Series were proposed to handle …
cite a few. In the early 1990's the so called Fuzzy Time Series were proposed to handle …