Stop oversampling for class imbalance learning: A review
For the last two decades, oversampling has been employed to overcome the challenge of
learning from imbalanced datasets. Many approaches to solving this challenge have been …
learning from imbalanced datasets. Many approaches to solving this challenge have been …
3D node deployment strategies prediction in wireless sensors network
ABSTRACT 3D Deployment plays a fundamental role in setting up efficient wireless sensor
networks (WSNs) and IoT networks. In general, WSN are widely utilised in a set of real …
networks (WSNs) and IoT networks. In general, WSN are widely utilised in a set of real …
Rdpvr: Random data partitioning with voting rule for machine learning from class-imbalanced datasets
Since most classifiers are biased toward the dominant class, class imbalance is a
challenging problem in machine learning. The most popular approaches to solving this …
challenging problem in machine learning. The most popular approaches to solving this …
Stock price forecasting for jordan insurance companies amid the covid-19 pandemic utilizing off-the-shelf technical analysis methods
One of the most difficult problems analysts and decision-makers may face is how to improve
the forecasting and predicting of financial time series. However, several efforts were made to …
the forecasting and predicting of financial time series. However, several efforts were made to …
Emergent IoT wireless technologies beyond the year 2020: A comprehensive comparative analysis
Low-power wide area networks (LPWANs) has recently emerged as a popular long-range
and low-speed radio communication technology as a result of the important growth of the …
and low-speed radio communication technology as a result of the important growth of the …
Magnetic force classifier: a Novel Method for Big Data classification
There are a plethora of invented classifiers in Machine learning literature, however, there is
no optimal classifier in terms of accuracy and time taken to build the trained model …
no optimal classifier in terms of accuracy and time taken to build the trained model …
IoT networks 3D deployment using hybrid many-objective optimization algorithms
When resolving many-objective problems, multi-objective optimization algorithms encounter
several difficulties degrading their performances. These difficulties may concern the …
several difficulties degrading their performances. These difficulties may concern the …
Genetic-Voronoi algorithm for coverage of IoT data collection networks
W Abdallah, T Val - 2020 30th International Conference on …, 2020 - ieeexplore.ieee.org
IoT data collection networks, formerly known as wireless sensor networks, have become one
of the most active areas of research in the field of information technology. The deployment of …
of the most active areas of research in the field of information technology. The deployment of …
Stop oversampling for class imbalance learning: A critical review
For the last two decades, oversampling has been employed to overcome the challenge of
learning from imbalanced datasets. Many approaches to solving this challenge have been …
learning from imbalanced datasets. Many approaches to solving this challenge have been …
[PDF][PDF] Modelling-based simulator for forecasting the spread of COVID-19: A case study of Saudi Arabia
In March 2020, Saudi Arabia reported that the Coronavirus disease (COVID-19) spread to its
territory, originating from China. In this study, a new simulation model estimates and …
territory, originating from China. In this study, a new simulation model estimates and …