The classification of data with imbalanced class distributions has posed a significant drawback in the performance attainable by most well-developed classification systems, which assume relatively balanced class distributions. This problem is especially crucial in many application domains, such as medical diagnosis, fraud detection, network intrusion, etc., which are of great importance in machine learning and data mining. This thesis explores meta-techniques which are applicable to most classifier learning algorithms, with the aim to advance the classification of imbalanced data. Boosting is a powerful meta-technique to learn an ensemble of weak models with a promise of improving the classification accuracy. AdaBoost has been ...
Classification is a data mining task. It aims to extract knowledge from large datasets. There are tw...
The first book of its kind to review the current status and future direction of the exciting new bra...
Imbalance datasets exist in many real-world domains. It is straightforward to apply classification a...
I hereby declare that I am the sole author of this thesis. This is a true copy of the thesis, includ...
We consider the problem of multi-class classification with imbalanced data-sets. To this end, we int...
Class imbalance poses a major challenge for machine learning as most supervised learning models migh...
Cost-sensitive boosting algorithms have proven successful for solving the difficult class imbalance ...
In many real-world applications, it is common to have uneven number of examples among multiple class...
The class imbalance problem is prevalent in many domains including medical, natural language process...
Since canonical machine learning algorithms assume that the dataset has equal number of samples in e...
MasterWe proposed the AdaBoost-type boosting algorithm applied to SVM by categorizing instances base...
M.Ing. (Electrical Engineering)Abstract: The emergence of Big Data and machine learning (ML) has pav...
This research tested the following well known strategies to deal with binary imbalanced data on 82 d...
Class imbalance is an issue in many real world applications because classification algorithms tend t...
The imbalanced learning problem (learning from imbalanced data) presents a significant new challenge...
Classification is a data mining task. It aims to extract knowledge from large datasets. There are tw...
The first book of its kind to review the current status and future direction of the exciting new bra...
Imbalance datasets exist in many real-world domains. It is straightforward to apply classification a...
I hereby declare that I am the sole author of this thesis. This is a true copy of the thesis, includ...
We consider the problem of multi-class classification with imbalanced data-sets. To this end, we int...
Class imbalance poses a major challenge for machine learning as most supervised learning models migh...
Cost-sensitive boosting algorithms have proven successful for solving the difficult class imbalance ...
In many real-world applications, it is common to have uneven number of examples among multiple class...
The class imbalance problem is prevalent in many domains including medical, natural language process...
Since canonical machine learning algorithms assume that the dataset has equal number of samples in e...
MasterWe proposed the AdaBoost-type boosting algorithm applied to SVM by categorizing instances base...
M.Ing. (Electrical Engineering)Abstract: The emergence of Big Data and machine learning (ML) has pav...
This research tested the following well known strategies to deal with binary imbalanced data on 82 d...
Class imbalance is an issue in many real world applications because classification algorithms tend t...
The imbalanced learning problem (learning from imbalanced data) presents a significant new challenge...
Classification is a data mining task. It aims to extract knowledge from large datasets. There are tw...
The first book of its kind to review the current status and future direction of the exciting new bra...
Imbalance datasets exist in many real-world domains. It is straightforward to apply classification a...