Data imbalance is one of the problems in the application of machine learning and data mining. Often this data imbalance occurs in the most essential and needed case entities. Two approaches to overcome this problem are the data level approach and the algorithm approach. This study aims to get the best model using the pap smear dataset that combined data levels with an algorithmic approach to solve data imbalanced. The laboratory data mostly have few data and imbalance. Almost in every case, the minor entities are the most important and needed. Over-sampling as a data level approach used in this study is the synthetic minority oversampling technique-nominal (SMOTE-N) and adaptive synthetic-nominal (ADASYN-N) algorithms. The algorithm approac...
Multi-class imbalanced data classification in supervised learning is one of the most challenging res...
Growing need for efficient algorithms for data manipulation, analysis, and intelligent use has been ...
The performance of the data classification has encountered a problem when the data distribution is i...
© International Association of Engineers. Mining imbalanced data, which is also known as a class im...
Oversampling method is one of the effective ways to deal with imbalance classification problems. Thi...
Imbalanced class problem (machine learning) is a problem that arises because of the significant diff...
In the data mining communal, imbalanced class dispersal data sets have established mounting consider...
The problem of learning from imbalanced data is of critical importance in a large number of applicat...
Imbalanced data sets in real-world applications have a majority class with normal instances and a mi...
Classification is an important activity in a variety of domains. Class imbalance problem have reduce...
We introduce a method to deal with the problem of learning from imbalanced data sets, where examples...
The imbalanced learning problem (learning from imbalanced data) presents a significant new challenge...
The aim of this paper is to investigate the effects of combining various sampling and ensemble class...
Dissertation presented as the partial requirement for obtaining a Master's degree in Statistics and...
Imbalance of the classes, characterized by a disproportional ratio of observations in each class, is...
Multi-class imbalanced data classification in supervised learning is one of the most challenging res...
Growing need for efficient algorithms for data manipulation, analysis, and intelligent use has been ...
The performance of the data classification has encountered a problem when the data distribution is i...
© International Association of Engineers. Mining imbalanced data, which is also known as a class im...
Oversampling method is one of the effective ways to deal with imbalance classification problems. Thi...
Imbalanced class problem (machine learning) is a problem that arises because of the significant diff...
In the data mining communal, imbalanced class dispersal data sets have established mounting consider...
The problem of learning from imbalanced data is of critical importance in a large number of applicat...
Imbalanced data sets in real-world applications have a majority class with normal instances and a mi...
Classification is an important activity in a variety of domains. Class imbalance problem have reduce...
We introduce a method to deal with the problem of learning from imbalanced data sets, where examples...
The imbalanced learning problem (learning from imbalanced data) presents a significant new challenge...
The aim of this paper is to investigate the effects of combining various sampling and ensemble class...
Dissertation presented as the partial requirement for obtaining a Master's degree in Statistics and...
Imbalance of the classes, characterized by a disproportional ratio of observations in each class, is...
Multi-class imbalanced data classification in supervised learning is one of the most challenging res...
Growing need for efficient algorithms for data manipulation, analysis, and intelligent use has been ...
The performance of the data classification has encountered a problem when the data distribution is i...