In predictive healthcare data analytics, high accuracy is both vital and paramount as low accuracy can lead to misdiagnosis, which is known to cause serious health consequences or death. Fast prediction is also considered an important desideratum particularly for machines and mobile devices with limited memory and processing power. For real-time health care analytics applications, particularly the ones that run on mobile devices, such traits (high accuracy and fast prediction) are highly desirable. In this paper, we propose to use an ensemble regression technique based on CLUB-DRF, which is a pruned Random Forest that possesses these features. The speed and accuracy of the method have been demonstrated by an experimental study on three medi...
Abstract: In today’s scenario, disease prediction plays an important role in medical field. Early de...
In healthcare machine learning is used mainly for disease diagnosis or acute condition detection bas...
Present days one of the major application areas of machine learning algorithms is medical diagnosis ...
In predictive healthcare data analytics, high accuracy is both vital and paramount as low accuracy c...
Abstract Background We present a method utilizing Healthcare Cost and Utilization Project (HCUP) dat...
Cardiovascular diseases (CVDs) such as hypertension, heart failure, stroke, and coronary artery dise...
Time-to-event outcomes are prevalent in medical research. To handle these outcomes, as well as censo...
Predictive analytics is employed to improve the ability to take precautionary measures during medica...
With the exponential growth of the Internet of Things and Cloud Computing, especially in recent year...
For the identification and prediction of different diseases, machine learning techniques are commonl...
Heart Disease is one of the most significant causes of mortality in the world today. Prediction and ...
With the advent of the data age, the continuous improvement and widespread application of medical in...
With the advent of the data age, the continuous improvement and widespread application of medical in...
Mustafa Jan,1 Akber A Awan,2 Muhammad S Khalid,1 Salman Nisar1 1Department of Industrial and Manufac...
The main focus of this thesis is to evaluate the use of ensemble methods to improve the performance ...
Abstract: In today’s scenario, disease prediction plays an important role in medical field. Early de...
In healthcare machine learning is used mainly for disease diagnosis or acute condition detection bas...
Present days one of the major application areas of machine learning algorithms is medical diagnosis ...
In predictive healthcare data analytics, high accuracy is both vital and paramount as low accuracy c...
Abstract Background We present a method utilizing Healthcare Cost and Utilization Project (HCUP) dat...
Cardiovascular diseases (CVDs) such as hypertension, heart failure, stroke, and coronary artery dise...
Time-to-event outcomes are prevalent in medical research. To handle these outcomes, as well as censo...
Predictive analytics is employed to improve the ability to take precautionary measures during medica...
With the exponential growth of the Internet of Things and Cloud Computing, especially in recent year...
For the identification and prediction of different diseases, machine learning techniques are commonl...
Heart Disease is one of the most significant causes of mortality in the world today. Prediction and ...
With the advent of the data age, the continuous improvement and widespread application of medical in...
With the advent of the data age, the continuous improvement and widespread application of medical in...
Mustafa Jan,1 Akber A Awan,2 Muhammad S Khalid,1 Salman Nisar1 1Department of Industrial and Manufac...
The main focus of this thesis is to evaluate the use of ensemble methods to improve the performance ...
Abstract: In today’s scenario, disease prediction plays an important role in medical field. Early de...
In healthcare machine learning is used mainly for disease diagnosis or acute condition detection bas...
Present days one of the major application areas of machine learning algorithms is medical diagnosis ...