Finding and removing misclassified instances are important steps in\ud data mining and machine learning that affect the performance of the data mining\ud algorithm in general. In this paper, we propose a C-Support Vector Classification\ud Filter (C-SVCF) to identify and remove the misclassified instances (outliers) in\ud breast cancer survivability samples collected from Srinagarind hospital in Thailand, to improve the accuracy of the prediction models. Only instances that are\ud correctly classified by the filter are passed to the learning algorithm. Performance of the proposed technique is measured with accuracy and area under the receiver operating characteristic curve (AUC), as well as compared with several\ud popular ensemble filter ap...
Cancer misdiagnosis is extremely common. We attempt to build different machine learning models that ...
There are more than 100 types of cancer around the world with different symptoms and difficulty in p...
Developing a prediction model from risk factors can provide an efficient method to recognize breast ...
Finding and removing misclassified instances are important steps in data mining and machine learnin...
Finding, and removing misclassified instances are important steps ill data mining and machine learni...
Finding suitable ways to develop models for predicting unknown data classes is a challenging task i...
Due to the difficulties of outlier and skewed data, the prediction of breast cancer survivability ha...
Finding suitable ways to develop models for predicting unknown data classes is a challenging\ud task...
Due to the difficulties of outlier and skewed data, the prediction of breast cancer survivability ha...
Cancer is the world's second largest cause of death. In 2018, 9.6 million people died from cancer. I...
In comparison to all other malignancies, breast cancer is the most common form of cancer, among wome...
As the cause of the breast cancer disease has not yet clearly identified and a method to prevent its...
Breast Cancer has surpassed all categories of cancer in incidence and is the most prevalent form of ...
As the cause of the breast cancer disease has not yet clearly identified and a method to prevent its...
Outlier detection is an important task in data mining because outliers can be either useful knowledg...
Cancer misdiagnosis is extremely common. We attempt to build different machine learning models that ...
There are more than 100 types of cancer around the world with different symptoms and difficulty in p...
Developing a prediction model from risk factors can provide an efficient method to recognize breast ...
Finding and removing misclassified instances are important steps in data mining and machine learnin...
Finding, and removing misclassified instances are important steps ill data mining and machine learni...
Finding suitable ways to develop models for predicting unknown data classes is a challenging task i...
Due to the difficulties of outlier and skewed data, the prediction of breast cancer survivability ha...
Finding suitable ways to develop models for predicting unknown data classes is a challenging\ud task...
Due to the difficulties of outlier and skewed data, the prediction of breast cancer survivability ha...
Cancer is the world's second largest cause of death. In 2018, 9.6 million people died from cancer. I...
In comparison to all other malignancies, breast cancer is the most common form of cancer, among wome...
As the cause of the breast cancer disease has not yet clearly identified and a method to prevent its...
Breast Cancer has surpassed all categories of cancer in incidence and is the most prevalent form of ...
As the cause of the breast cancer disease has not yet clearly identified and a method to prevent its...
Outlier detection is an important task in data mining because outliers can be either useful knowledg...
Cancer misdiagnosis is extremely common. We attempt to build different machine learning models that ...
There are more than 100 types of cancer around the world with different symptoms and difficulty in p...
Developing a prediction model from risk factors can provide an efficient method to recognize breast ...