Background Machine learning involves strategies and algorithms that may assist bioinformatics analyses in terms of data mining and knowledge discovery. In several applications, viz. in Life Sciences, it is often more important to understand how a prediction was obtained rather than knowing what prediction was made. To this end so-called interpretable machine learning has been recently advocated. In this study, we implemented an interpretable machine learning package based on the rough set theory. An important aim of our work was provision of statistical properties of the models and their components. Results We present the R.ROSETTA package, which is an R wrapper of ROSETTA framework. The original ROSETTA functions have been improved and ada...
Machine learning has become a powerful tool for systems biologists, from diagnosing cancer to optimi...
The complex genetic architecture of Autism Spectrum Disorder (ASD) and its heterogeneous phenotype m...
The autism dataset is studied to identify the differences between autistic and healthy groups. For t...
Background Machine learning involves strategies and algorithms that may assist bioinformatics analys...
Background: Classification of human tumors into distinguishable entities is traditionally based on c...
Autism spectrum disorder (ASD) is a heterogeneous neuropsychiatric disorder with a complex genetic b...
Microarray technology has recently attracted a lot of attention. This technology can measure the beh...
The Rough Sets methodology has great potential for mining experimental data. Since its introduction ...
Acute lymphoblastic leukemia is a hematological malignancy that gains a proliferative advantage and ...
Abstract: Autism spectrum disorder is a neurodevelopmental disorder that affects a person's interact...
This thesis examines how discernibility-based methods can be equipped to posses several qualities th...
Machine Learning techniques can be used to improve the performance of intelligent software systems. ...
This paper highlights the prediction of learning disabilities (LD) in school-age children using roug...
This study delves into the application of machine learning models for the early detection of Autism ...
In recent years, researchers have become increasingly interested in disease-gene association predict...
Machine learning has become a powerful tool for systems biologists, from diagnosing cancer to optimi...
The complex genetic architecture of Autism Spectrum Disorder (ASD) and its heterogeneous phenotype m...
The autism dataset is studied to identify the differences between autistic and healthy groups. For t...
Background Machine learning involves strategies and algorithms that may assist bioinformatics analys...
Background: Classification of human tumors into distinguishable entities is traditionally based on c...
Autism spectrum disorder (ASD) is a heterogeneous neuropsychiatric disorder with a complex genetic b...
Microarray technology has recently attracted a lot of attention. This technology can measure the beh...
The Rough Sets methodology has great potential for mining experimental data. Since its introduction ...
Acute lymphoblastic leukemia is a hematological malignancy that gains a proliferative advantage and ...
Abstract: Autism spectrum disorder is a neurodevelopmental disorder that affects a person's interact...
This thesis examines how discernibility-based methods can be equipped to posses several qualities th...
Machine Learning techniques can be used to improve the performance of intelligent software systems. ...
This paper highlights the prediction of learning disabilities (LD) in school-age children using roug...
This study delves into the application of machine learning models for the early detection of Autism ...
In recent years, researchers have become increasingly interested in disease-gene association predict...
Machine learning has become a powerful tool for systems biologists, from diagnosing cancer to optimi...
The complex genetic architecture of Autism Spectrum Disorder (ASD) and its heterogeneous phenotype m...
The autism dataset is studied to identify the differences between autistic and healthy groups. For t...