Prediction and learning in the presence of missing data are pervasive problems in data analysis by machine learning. This study focuses on the problems of collaborative classification with missing data on Coronary Artery Disease (CAD) and suggests alternative imputation methods in the case of the lack of laboratory test as well other specific parameters. This study develops three novel data imputation methods utilizing machine learning algorithms (K-means, Multilayer Perceptron (MLP), and Self-Organizing Maps (SOMs)) and compares the performance of our methods with well-known mean method. Benchmark classification methods (Logistic Model Trees (LMT), MLP, Random Forest (RF), and Support Vector Machine (SVM)) are used to conduct experiments o...
BackgroundMachine learning (ML) models can improve prediction of major adverse cardiovascular events...
Legacy (and current) medical datasets are rich source of information and knowledge. However, the use...
Classifying samples in incomplete datasets is a common aim for machine learning practitioners, but i...
Many clinical research datasets have a large percentage of missing values that directly impacts thei...
Background Classifying samples in incomplete datasets is a common aim for machine learning practitio...
One important characteristic of good data is completeness. Missing data is a major problem in the cl...
This work is about classifying time series with missing data with the help of imputation and selecte...
Clinical data often contains missing values. Imputation is one of the best known schemes to overcome...
The incomplete dataset is an unescapable problem in data preprocessing that primarily machine learni...
Missing Data imputation is an important research topic in data mining. In general, real data contain...
A high level of data quality has always been a concern for many applications based on machine learni...
Heart disease, one of the main reasons behind the high mortality rate around the world, requires a s...
In the last few decades, statistical methods and machine learning (ML) algorithms have become effici...
Cardiovascular disease (CVD) is a class of diseases that involve the heart or blood vessels and acco...
The existence of missing values reduces the amount of knowledge learned by the machine learning mode...
BackgroundMachine learning (ML) models can improve prediction of major adverse cardiovascular events...
Legacy (and current) medical datasets are rich source of information and knowledge. However, the use...
Classifying samples in incomplete datasets is a common aim for machine learning practitioners, but i...
Many clinical research datasets have a large percentage of missing values that directly impacts thei...
Background Classifying samples in incomplete datasets is a common aim for machine learning practitio...
One important characteristic of good data is completeness. Missing data is a major problem in the cl...
This work is about classifying time series with missing data with the help of imputation and selecte...
Clinical data often contains missing values. Imputation is one of the best known schemes to overcome...
The incomplete dataset is an unescapable problem in data preprocessing that primarily machine learni...
Missing Data imputation is an important research topic in data mining. In general, real data contain...
A high level of data quality has always been a concern for many applications based on machine learni...
Heart disease, one of the main reasons behind the high mortality rate around the world, requires a s...
In the last few decades, statistical methods and machine learning (ML) algorithms have become effici...
Cardiovascular disease (CVD) is a class of diseases that involve the heart or blood vessels and acco...
The existence of missing values reduces the amount of knowledge learned by the machine learning mode...
BackgroundMachine learning (ML) models can improve prediction of major adverse cardiovascular events...
Legacy (and current) medical datasets are rich source of information and knowledge. However, the use...
Classifying samples in incomplete datasets is a common aim for machine learning practitioners, but i...