Early diagnosis of some life-threatening diseases such as cancers and heart is crucial for effective treatments. Supervised machine learning has proved to be a very useful tool to serve this purpose. Historical data of patients including clinical and demographic information is used for training learning algorithms. This builds predictive models that provide initial diagnoses. However, in the medical domain, it is common to have the positive class under-represented in a dataset. In such a scenario, a typical learning algorithm tends to be biased towards the negative class, which is the majority class, and misclassify positive cases. This is known as the class imbalance problem. In this paper, a framework for predictive diagnostics of disease...
We propose performing imbalanced classification by regrouping majority classes into small classes so...
Abstract—The class imbalance problem is a well-known classi-fication challenge in machine learning t...
There is an unprecedented amount of data available. This has caused knowledge discovery to garner at...
Classification of imbalanced datasets has attracted substantial research interest over the past deca...
Class imbalanced datasets are common across different domains including health, security, banking an...
Today, the surge in data has also increased the complexity of class imbalance problem. Real-world sc...
Many classification problems must deal with imbalanced datasets where one class \u2013 the majority ...
Class overlap and class imbalance are two data complexities that challenge the design of effective c...
In this paper, we present a new rule induction algorithm for machine learning in medical diagnosis. ...
In the paper 'Improved Overlap-Based Undersampling for Imbalanced Dataset Classification with Applic...
Class imbalance is a common challenge when dealing with pattern classification of real-world medica...
Learning from outliers and imbalanced data remains one of the major difficulties for machine learnin...
In many application domains such as medicine, information retrieval, cybersecurity, social media, et...
In recent years, imbalanced data classification are utilized in several domains including, detecting...
Most existing classification approaches assume the underlying training set is evenly distributed. In...
We propose performing imbalanced classification by regrouping majority classes into small classes so...
Abstract—The class imbalance problem is a well-known classi-fication challenge in machine learning t...
There is an unprecedented amount of data available. This has caused knowledge discovery to garner at...
Classification of imbalanced datasets has attracted substantial research interest over the past deca...
Class imbalanced datasets are common across different domains including health, security, banking an...
Today, the surge in data has also increased the complexity of class imbalance problem. Real-world sc...
Many classification problems must deal with imbalanced datasets where one class \u2013 the majority ...
Class overlap and class imbalance are two data complexities that challenge the design of effective c...
In this paper, we present a new rule induction algorithm for machine learning in medical diagnosis. ...
In the paper 'Improved Overlap-Based Undersampling for Imbalanced Dataset Classification with Applic...
Class imbalance is a common challenge when dealing with pattern classification of real-world medica...
Learning from outliers and imbalanced data remains one of the major difficulties for machine learnin...
In many application domains such as medicine, information retrieval, cybersecurity, social media, et...
In recent years, imbalanced data classification are utilized in several domains including, detecting...
Most existing classification approaches assume the underlying training set is evenly distributed. In...
We propose performing imbalanced classification by regrouping majority classes into small classes so...
Abstract—The class imbalance problem is a well-known classi-fication challenge in machine learning t...
There is an unprecedented amount of data available. This has caused knowledge discovery to garner at...