Ensemble models achieve high accuracy by combining a number of base estimators and can increase the reliability of machine learning compared to a single estimator. Additionally, an ensemble model enables a machine learning method to deal with imbalanced data, which is considered to be one of the most challenging problems in machine learning. In this paper, the capability of Adaptive Boosting (AdaBoost) is integrated with a Convolutional Neural Network (CNN) to design a new machine learning method, AdaBoost-CNN, which can deal with large imbalanced datasets with high accuracy. AdaBoost is an ensemble method where a sequence of classifiers is trained. In AdaBoost, each training sample is assigned a weight, and a higher weight is set for a tra...
MasterWe proposed the AdaBoost-type boosting algorithm applied to SVM by categorizing instances base...
This research provides an overview on how training Convolutional Neural Networks (CNNs) on imbalance...
In many real-world applications, it is common to have uneven number of examples among multiple class...
Ensemble models achieve high accuracy by combining a number of base estimators and can increase the ...
The work was funded by The Leverhulme Trust Research Project Grant RPG-2016-252 entitled “Novel Appr...
Data imbalance is one of the most difficult problems in machine learning. The improved ensemble lear...
Data imbalance is one of the most difficult problems in machine learning. The improved ensemble lear...
Data imbalance is one of the most difficult problems in machine learning. The improved ensemble lear...
This thesis introduces new approaches, namely the DataBoost and DataBoost-IM algorithms, to extend B...
Since canonical machine learning algorithms assume that the dataset has equal number of samples in e...
Class imbalance is an issue in many real world applications because classification algorithms tend t...
This work presents a modified Boosting algorithm capable of avoiding training sample overfitting dur...
Imbalanced Data (ID) is a problem that deters Machine Learning (ML) models from achieving satisfacto...
The classification of data with imbalanced class distributions has posed a significant drawback in ...
Class imbalance is an issue in many real world applications because classification algorithms tend t...
MasterWe proposed the AdaBoost-type boosting algorithm applied to SVM by categorizing instances base...
This research provides an overview on how training Convolutional Neural Networks (CNNs) on imbalance...
In many real-world applications, it is common to have uneven number of examples among multiple class...
Ensemble models achieve high accuracy by combining a number of base estimators and can increase the ...
The work was funded by The Leverhulme Trust Research Project Grant RPG-2016-252 entitled “Novel Appr...
Data imbalance is one of the most difficult problems in machine learning. The improved ensemble lear...
Data imbalance is one of the most difficult problems in machine learning. The improved ensemble lear...
Data imbalance is one of the most difficult problems in machine learning. The improved ensemble lear...
This thesis introduces new approaches, namely the DataBoost and DataBoost-IM algorithms, to extend B...
Since canonical machine learning algorithms assume that the dataset has equal number of samples in e...
Class imbalance is an issue in many real world applications because classification algorithms tend t...
This work presents a modified Boosting algorithm capable of avoiding training sample overfitting dur...
Imbalanced Data (ID) is a problem that deters Machine Learning (ML) models from achieving satisfacto...
The classification of data with imbalanced class distributions has posed a significant drawback in ...
Class imbalance is an issue in many real world applications because classification algorithms tend t...
MasterWe proposed the AdaBoost-type boosting algorithm applied to SVM by categorizing instances base...
This research provides an overview on how training Convolutional Neural Networks (CNNs) on imbalance...
In many real-world applications, it is common to have uneven number of examples among multiple class...