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Systematic review of using machine learning in imputing missing values
Missing data are a universal data quality problem in many domains, leading to misleading
analysis and inaccurate decisions. Much research has been done to investigate the different …
analysis and inaccurate decisions. Much research has been done to investigate the different …
Reviewing autoencoders for missing data imputation: Technical trends, applications and outcomes
Missing data is a problem often found in real-world datasets and it can degrade the
performance of most machine learning models. Several deep learning techniques have …
performance of most machine learning models. Several deep learning techniques have …
Generating synthetic missing data: A review by missing mechanism
The performance evaluation of imputation algorithms often involves the generation of
missing values. Missing values can be inserted in only one feature (univariate configuration) …
missing values. Missing values can be inserted in only one feature (univariate configuration) …
ydata-profiling: Accelerating data-centric AI with high-quality data
Abstract ydata-profiling is an open-source Python package for advanced exploratory data
analysis that enables users to generate data profiling reports in a simple, fast, and efficient …
analysis that enables users to generate data profiling reports in a simple, fast, and efficient …
[PDF][PDF] Predicting cervical cancer using machine learning methods
In almost all countries, precautionary measures are less expensive than medical treatment.
The early detection of any disease gives a patient better chances of successful treatment …
The early detection of any disease gives a patient better chances of successful treatment …
The impact of heterogeneous distance functions on missing data imputation and classification performance
This work performs an in-depth study of the impact of distance functions on K-Nearest
Neighbours imputation of heterogeneous datasets. Missing data is generated at several …
Neighbours imputation of heterogeneous datasets. Missing data is generated at several …
How distance metrics influence missing data imputation with k-nearest neighbours
In missing data contexts, k-nearest neighbours imputation has proven beneficial since it
takes advantage of the similarity between patterns to replace missing values. When dealing …
takes advantage of the similarity between patterns to replace missing values. When dealing …
Normalization and outlier removal in class center-based firefly algorithm for missing value imputation
A missing value is one of the factors that often cause incomplete data in almost all studies,
even those that are well-designed and controlled. It can also decrease a study's statistical …
even those that are well-designed and controlled. It can also decrease a study's statistical …
Missing data imputation via denoising autoencoders: the untold story
Missing data consists in the lack of information in a dataset and since it directly influences
classification performance, neglecting it is not a valid option. Over the years, several studies …
classification performance, neglecting it is not a valid option. Over the years, several studies …
A data-driven missing value imputation approach for longitudinal datasets
C Ribeiro, AA Freitas - Artificial Intelligence Review, 2021 - Springer
Longitudinal datasets of human ageing studies usually have a high volume of missing data,
and one way to handle missing values in a dataset is to replace them with estimations …
and one way to handle missing values in a dataset is to replace them with estimations …