Due to the difficulties of outlier and skewed data, the prediction of breast cancer survivability has presented many challenges in the field of data mining and pattern precognition, especially in medical research. To solve these problems, we have proposed a hybrid approach to generating higher quality data sets in the creation of improved breast cancer survival prediction models. This approach comprises two main steps: (1) utilization of an outlier filtering approach based on C-Support Vector Classification (C-SVC) to identify and eliminate outlier instances; and (2) application of an over-sampling approach using over-sampling with replacement to increase the number of instances in the minority class. In order to assess the capability and e...
With increasing number of cases and deaths every year, breast cancer is one of the most common healt...
The Support Vector Regression (SVR) model has been broadly used for response prediction. However, fe...
In this paper we present an analysis of the prediction of survivability rate of breast cancer patien...
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 task i...
Finding suitable ways to develop models for predicting unknown data classes is a challenging\ud task...
Finding and removing misclassified instances are important steps in\ud data mining and machine learn...
Abstract: Breast cancer is one of the deadliest diseases, claiming approximately 627,000 lives world...
Background Breast cancer is the most common cancer affecting females worldwide. Breast cancer surviv...
Application of data mining methods as a decision support system has a great benefit to predict survi...
this study concentrates on Predicting Breast Cancer Survivability using data mining, and comparing b...
Presented to the 13th Annual Symposium on Graduate Research and Scholarly Projects (GRASP) held at t...
Every 12 minutes, 12 women are diagnosed with breast cancer in the US, and 1 dies out of it. Globall...
Developing a prediction model from risk factors can provide an efficient method to recognize breast ...
BACKGROUND: Breast cancer is one of the most common cancers with a high mortality rate among women....
With increasing number of cases and deaths every year, breast cancer is one of the most common healt...
The Support Vector Regression (SVR) model has been broadly used for response prediction. However, fe...
In this paper we present an analysis of the prediction of survivability rate of breast cancer patien...
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 task i...
Finding suitable ways to develop models for predicting unknown data classes is a challenging\ud task...
Finding and removing misclassified instances are important steps in\ud data mining and machine learn...
Abstract: Breast cancer is one of the deadliest diseases, claiming approximately 627,000 lives world...
Background Breast cancer is the most common cancer affecting females worldwide. Breast cancer surviv...
Application of data mining methods as a decision support system has a great benefit to predict survi...
this study concentrates on Predicting Breast Cancer Survivability using data mining, and comparing b...
Presented to the 13th Annual Symposium on Graduate Research and Scholarly Projects (GRASP) held at t...
Every 12 minutes, 12 women are diagnosed with breast cancer in the US, and 1 dies out of it. Globall...
Developing a prediction model from risk factors can provide an efficient method to recognize breast ...
BACKGROUND: Breast cancer is one of the most common cancers with a high mortality rate among women....
With increasing number of cases and deaths every year, breast cancer is one of the most common healt...
The Support Vector Regression (SVR) model has been broadly used for response prediction. However, fe...
In this paper we present an analysis of the prediction of survivability rate of breast cancer patien...