Class imbalance poses a major challenge for machine learning as most supervised learning models might exhibit bias towards the majority class and under-perform in the minority class. Cost-sensitive learning tackles this problem by treating the classes differently, formulated typically via a user-defined fixed misclassification cost matrix provided as input to the learner. Such parameter tuning is a challenging task that requires domain knowledge and moreover, wrong adjustments might lead to overall predictive performance deterioration. In this work, we propose a novel cost-sensitive boosting approach for imbalanced data that dynamically adjusts the misclassification costs over the boosting rounds in response to model's performance instead o...
Ensemble models achieve high accuracy by combining a number of base estimators and can increase the ...
Ensemble models achieve high accuracy by combining a number of base estimators and can increase the ...
This work presents a modified Boosting algorithm capable of avoiding training sample overfitting dur...
The classification of data with imbalanced class distributions has posed a significant drawback in ...
Cost-sensitive boosting algorithms have proven successful for solving the difficult class imbalance ...
We consider the problem of multi-class classification with imbalanced data-sets. To this end, we int...
I hereby declare that I am the sole author of this thesis. This is a true copy of the thesis, includ...
MasterWe proposed the AdaBoost-type boosting algorithm applied to SVM by categorizing instances base...
In imbalanced multi-class classification problems, the misclassification rate as an error measure ma...
We provide a unifying perspective for two decades of work on cost-sensitive Boosting algorithms. Whe...
The imbalanced learning problem (learning from imbalanced data) presents a significant new challenge...
The work was funded by The Leverhulme Trust Research Project Grant RPG-2016-252 entitled “Novel Appr...
Abstract—Existing attempts to improve the performance of AdaBoost on imbalanced datasets have largel...
Learning from imbalanced data sets is one of the challenging problems in machine learning, which mea...
The class imbalance problem is prevalent in many domains including medical, natural language process...
Ensemble models achieve high accuracy by combining a number of base estimators and can increase the ...
Ensemble models achieve high accuracy by combining a number of base estimators and can increase the ...
This work presents a modified Boosting algorithm capable of avoiding training sample overfitting dur...
The classification of data with imbalanced class distributions has posed a significant drawback in ...
Cost-sensitive boosting algorithms have proven successful for solving the difficult class imbalance ...
We consider the problem of multi-class classification with imbalanced data-sets. To this end, we int...
I hereby declare that I am the sole author of this thesis. This is a true copy of the thesis, includ...
MasterWe proposed the AdaBoost-type boosting algorithm applied to SVM by categorizing instances base...
In imbalanced multi-class classification problems, the misclassification rate as an error measure ma...
We provide a unifying perspective for two decades of work on cost-sensitive Boosting algorithms. Whe...
The imbalanced learning problem (learning from imbalanced data) presents a significant new challenge...
The work was funded by The Leverhulme Trust Research Project Grant RPG-2016-252 entitled “Novel Appr...
Abstract—Existing attempts to improve the performance of AdaBoost on imbalanced datasets have largel...
Learning from imbalanced data sets is one of the challenging problems in machine learning, which mea...
The class imbalance problem is prevalent in many domains including medical, natural language process...
Ensemble models achieve high accuracy by combining a number of base estimators and can increase the ...
Ensemble models achieve high accuracy by combining a number of base estimators and can increase the ...
This work presents a modified Boosting algorithm capable of avoiding training sample overfitting dur...