Missing data imputation has been a hot topic in the past decade, and many state-of-the-art works have been presented to propose novel, interesting solutions that have been applied in a variety of fields. In the past decade, the successful results achieved by deep learning techniques have opened the way to their application for solving difficult problems where human skill is not able to provide a reliable solution. Not surprisingly, some deep learners, mainly exploiting encoder-decoder architectures, have also been designed and applied to the task of missing data imputation. However, most of the proposed imputation techniques have not been designed to tackle “complex data”, that is high dimensional data belonging to datasets with huge cardin...
Genomics data such as RNA gene expression, methylation and micro RNA expression are valuable sources...
Genotype imputation has a wide range of applications in genome-wide association study (GWAS), includ...
Two deep learning techniques for classification on corrupt data are investigated and compared by per...
Missing data imputation has been a hot topic in the past decade, and many state-of-the-art works hav...
Missing data imputation has been a hot topic in the past decade, and many state-of-the-art works hav...
In this project, two different machine learning models were tested in an attempt at imputing missing...
Many real-world datasets suffer from missing data, which can introduce uncertainty into ensuing anal...
Dealing with missing data in data analysis is inevitable. Although powerful imputation methods that ...
In this project, a model based on a convolutional neural network have been developed with the aim of...
The analysis of digital health data with machine learning models can be used in clinical application...
The missing values in the datasets are a problem that will decrease the machine learning performance...
Abstract Single-cell RNA sequencing (scRNA-seq) offers new opportunities to study gene...
Biomedical datasets that aim to collect diverse phenotypic and genomic data across large numbers of ...
A question of fundamental biological significance is to what extent the expression of a subset of ge...
Machine learning relies on data. However, real-world datasets are far from perfect. One of the bigge...
Genomics data such as RNA gene expression, methylation and micro RNA expression are valuable sources...
Genotype imputation has a wide range of applications in genome-wide association study (GWAS), includ...
Two deep learning techniques for classification on corrupt data are investigated and compared by per...
Missing data imputation has been a hot topic in the past decade, and many state-of-the-art works hav...
Missing data imputation has been a hot topic in the past decade, and many state-of-the-art works hav...
In this project, two different machine learning models were tested in an attempt at imputing missing...
Many real-world datasets suffer from missing data, which can introduce uncertainty into ensuing anal...
Dealing with missing data in data analysis is inevitable. Although powerful imputation methods that ...
In this project, a model based on a convolutional neural network have been developed with the aim of...
The analysis of digital health data with machine learning models can be used in clinical application...
The missing values in the datasets are a problem that will decrease the machine learning performance...
Abstract Single-cell RNA sequencing (scRNA-seq) offers new opportunities to study gene...
Biomedical datasets that aim to collect diverse phenotypic and genomic data across large numbers of ...
A question of fundamental biological significance is to what extent the expression of a subset of ge...
Machine learning relies on data. However, real-world datasets are far from perfect. One of the bigge...
Genomics data such as RNA gene expression, methylation and micro RNA expression are valuable sources...
Genotype imputation has a wide range of applications in genome-wide association study (GWAS), includ...
Two deep learning techniques for classification on corrupt data are investigated and compared by per...