We are in a machine learning age where several predictive applications that are life dependent are made by machines and robotic devices that relies on ensemble decision making algorithms. These have attracted many researchers and led to the development of an algorithm that is based on the integration of EKF, RBF networks and AdaBoost as an ensemble model to improve prediction accuracy. Firstly, EKF is used to optimize the slow training speed and improve the efficiency of the RBF network training parameters. Secondly, AdaBoost is applied to generate and combine RBFN-EKF weak predictors to form a strong predictor. Breast cancer survivability and diabetes datasets used were obtained from the UCI repository. Results are presented on the propo...
The automated diagnosis of diseases with high accuracy rate is one of the most crucial problems in m...
For the identification and prediction of different diseases, machine learning techniques are commonl...
Breast cancer is the most frequently encountered medical hazard for women in their forties, affectin...
We are in a machine learning age where several predictive applications that are life dependent are m...
The continued reliance on machine learning algorithms and robotic devices in the medical and enginee...
In this paper we propose new ensemble cancer survivability prediction models based three variants of...
The application of ensemble predictive models has been an important research area in predicting medi...
Accurate and early diagnosis of breast cancer increases survival rate of patients. Diagnosis of Brea...
In this paper we propose a combination of the AdaBoost and random forests algorithms for constructi...
Today’s world faces a serious public health problem with cancer. One type of cancer that begins in t...
Current breast cancer predictive signatures are not unique. Can we use this fact to our advantage to...
heart disease is a major cause of death worldwide. Thus, diagnosis and prediction of heart disease r...
Worldwide, breast cancer is the leading cause of death among women. Early detection is essential for...
Diabetes is a long-lasting disease triggered by expanded sugar levels in human blood and can affect ...
Diabetes is a dreadful disease identified by escalated levels of glucose in the blood. Machine learn...
The automated diagnosis of diseases with high accuracy rate is one of the most crucial problems in m...
For the identification and prediction of different diseases, machine learning techniques are commonl...
Breast cancer is the most frequently encountered medical hazard for women in their forties, affectin...
We are in a machine learning age where several predictive applications that are life dependent are m...
The continued reliance on machine learning algorithms and robotic devices in the medical and enginee...
In this paper we propose new ensemble cancer survivability prediction models based three variants of...
The application of ensemble predictive models has been an important research area in predicting medi...
Accurate and early diagnosis of breast cancer increases survival rate of patients. Diagnosis of Brea...
In this paper we propose a combination of the AdaBoost and random forests algorithms for constructi...
Today’s world faces a serious public health problem with cancer. One type of cancer that begins in t...
Current breast cancer predictive signatures are not unique. Can we use this fact to our advantage to...
heart disease is a major cause of death worldwide. Thus, diagnosis and prediction of heart disease r...
Worldwide, breast cancer is the leading cause of death among women. Early detection is essential for...
Diabetes is a long-lasting disease triggered by expanded sugar levels in human blood and can affect ...
Diabetes is a dreadful disease identified by escalated levels of glucose in the blood. Machine learn...
The automated diagnosis of diseases with high accuracy rate is one of the most crucial problems in m...
For the identification and prediction of different diseases, machine learning techniques are commonl...
Breast cancer is the most frequently encountered medical hazard for women in their forties, affectin...