a b s t r a c t Latest developments in computing and technology, along with the availability of large amounts of raw data, have led to the development of many computational techniques and algorithms. Concerning binary data classification in particular, analysis of data containing rare events or disproportionate class distributions poses a great challenge to industry and to the machine learning community. Logistic Regression (LR) is a powerful classifier. The combination of LR and the truncated-regularized iteratively re-weighted least squares (TR-IRLS) algorithm, has provided a powerful classification method for large data sets. This study examines imbalanced data with binary response variables containing many more non-events (zeros) than e...
Logistic regression is estimated by maximizing the log-likelihood objective function formulated unde...
There have been a variety of predictive models capable of handling binary targets, ranging from trad...
The purpose of many real world applications is the prediction of rare events, and the training sets ...
Recent developments in computing and technology, along with the availability of large amounts of raw...
Recent developments in computing and technology, along with the availability of large amounts of raw...
Logistic regression is a classical classification method, it has been used widely in many applicatio...
Rare events represent a great analytical challenge. The maximum likelihood-based (ML) binary logit m...
We study rare events data, binary dependent variables with dozens to thousands of times fewer ones (...
Classification of imbalanced data sets is one of the important researches in Data Mining community, ...
A boosting-based machine learning algorithm is presented to model a binary response with large imbal...
The logistic regression (LR) model for assessing differential item functioning (DIF) is highly depen...
We develop a novel covariate ranking and selection algorithm for regularized ordinary logistic regre...
In this paper, the performance of hurdle models in rare events data is improved by modifying their b...
We study rare events data, binary dependent variables with dozens to thousands of times fewer ones (...
Binary classification algorithms are often used in situations when one of the two classes is extreme...
Logistic regression is estimated by maximizing the log-likelihood objective function formulated unde...
There have been a variety of predictive models capable of handling binary targets, ranging from trad...
The purpose of many real world applications is the prediction of rare events, and the training sets ...
Recent developments in computing and technology, along with the availability of large amounts of raw...
Recent developments in computing and technology, along with the availability of large amounts of raw...
Logistic regression is a classical classification method, it has been used widely in many applicatio...
Rare events represent a great analytical challenge. The maximum likelihood-based (ML) binary logit m...
We study rare events data, binary dependent variables with dozens to thousands of times fewer ones (...
Classification of imbalanced data sets is one of the important researches in Data Mining community, ...
A boosting-based machine learning algorithm is presented to model a binary response with large imbal...
The logistic regression (LR) model for assessing differential item functioning (DIF) is highly depen...
We develop a novel covariate ranking and selection algorithm for regularized ordinary logistic regre...
In this paper, the performance of hurdle models in rare events data is improved by modifying their b...
We study rare events data, binary dependent variables with dozens to thousands of times fewer ones (...
Binary classification algorithms are often used in situations when one of the two classes is extreme...
Logistic regression is estimated by maximizing the log-likelihood objective function formulated unde...
There have been a variety of predictive models capable of handling binary targets, ranging from trad...
The purpose of many real world applications is the prediction of rare events, and the training sets ...