Missing data is one of the most common issues encountered in data cleaning process especially when dealing with medical dataset. A real collected dataset is prone to be incomplete, inconsistent, noisy and redundant due to potential reasons such as human errors, instrumental failures, and adverse death. Therefore, to accurately deal with incomplete data, a sophisticated algorithm is proposed to impute those missing values. Many machine learning algorithms have been applied to impute missing data with plausible values. However, among all machine learning imputation algorithms, KNN algorithm has been widely adopted as an imputation for missing data due to its robustness and simplicity and it is also a promising method to outperform other machi...
Background: In modern biomedical research of complex diseases, a large number of demographic and cli...
Aim of this study is to show the dangers of filling missing data - particularly medical data. Becaus...
Prediction and learning in the presence of missing data are pervasive problems in data analysis by m...
Missing data is one of the most common issues encountered in data cleaning process especially when d...
The incomplete dataset is an unescapable problem in data preprocessing that primarily machine learni...
Missing data are a universal data quality problem in many domains, leading to misleading analysis an...
Machine learning plays a pivotal role in data analysis and information extraction. However, one comm...
The evolution of big data analytics through machine learning and artificial intelligence techniq...
Imputation of missing data is a common application in supervised classification problems, where the ...
K-nearest neighbors (KNN) has been extensively used as imputation algorithm to substitute missing da...
One important characteristic of good data is completeness. Missing data is a major problem in the cl...
Cardiovascular disease (CVD) is a class of diseases that involve the heart or blood vessels and acco...
Electronic health records (EHRs) have been widely adopted in recent years, but often include a high ...
The analysis of digital health data with machine learning models can be used in clinical application...
Data mining requires a pre-processing task in which the data are prepared,cleaned,integrated,transfo...
Background: In modern biomedical research of complex diseases, a large number of demographic and cli...
Aim of this study is to show the dangers of filling missing data - particularly medical data. Becaus...
Prediction and learning in the presence of missing data are pervasive problems in data analysis by m...
Missing data is one of the most common issues encountered in data cleaning process especially when d...
The incomplete dataset is an unescapable problem in data preprocessing that primarily machine learni...
Missing data are a universal data quality problem in many domains, leading to misleading analysis an...
Machine learning plays a pivotal role in data analysis and information extraction. However, one comm...
The evolution of big data analytics through machine learning and artificial intelligence techniq...
Imputation of missing data is a common application in supervised classification problems, where the ...
K-nearest neighbors (KNN) has been extensively used as imputation algorithm to substitute missing da...
One important characteristic of good data is completeness. Missing data is a major problem in the cl...
Cardiovascular disease (CVD) is a class of diseases that involve the heart or blood vessels and acco...
Electronic health records (EHRs) have been widely adopted in recent years, but often include a high ...
The analysis of digital health data with machine learning models can be used in clinical application...
Data mining requires a pre-processing task in which the data are prepared,cleaned,integrated,transfo...
Background: In modern biomedical research of complex diseases, a large number of demographic and cli...
Aim of this study is to show the dangers of filling missing data - particularly medical data. Becaus...
Prediction and learning in the presence of missing data are pervasive problems in data analysis by m...