Despite the availability of numerous statistical and machine learning tools for joint feature modeling, many scientists investigate features marginally, i.e., one feature at a time. This is partly due to training and convention but also roots in scientists' strong interests in simple visualization and interpretability. As such, marginal feature ranking for some predictive tasks, e.g., prediction of cancer driver genes, is widely practiced in the process of scientific discoveries. In this work, we focus on marginal ranking for binary classification, one of the most common predictive tasks. We argue that the most widely used marginal ranking criteria, including the Pearson correlation, the two-sample t test, and two-sample Wilcoxon rank-sum t...
We study the problem of ranking a set of items from nonactively chosen pairwise preferences where ea...
The problem of ranking arises ubiquitously in almost every aspect of life, and in particular in Mach...
An important problem in bioinformatics consists of identifying the most important features (or predi...
Despite the availability of numerous statistical and machine learning tools for joint feature modeli...
Despite the availability of numerous statistical and machine learning tools for joint feature modeli...
Despite the availability of numerous statistical and machine learning tools for joint feature modeli...
When building a predictive model for predicting a clinical outcome using machine learning techniques...
peer reviewedIn this article, we propose a method for evaluating feature ranking algorithms. A featu...
Instance ranking is a subfield of supervised machine learning and is concerned with inferring predic...
We describe a feature selection method that can be applied directly to models that are linear with r...
Abstract: We presented a comparison between several feature ranking methods used on two real dataset...
The paper presents an algorithm to rank features in “small number of samples, large dimensionality” ...
There has been a growing interest in representing real-life applications with data sets having binar...
© 2020 Batugahage Kushani Anuradha PereraFeature selection plays a vital role in machine learning by...
In prediction modeling, the choice of features chosen from the original feature set is crucial for a...
We study the problem of ranking a set of items from nonactively chosen pairwise preferences where ea...
The problem of ranking arises ubiquitously in almost every aspect of life, and in particular in Mach...
An important problem in bioinformatics consists of identifying the most important features (or predi...
Despite the availability of numerous statistical and machine learning tools for joint feature modeli...
Despite the availability of numerous statistical and machine learning tools for joint feature modeli...
Despite the availability of numerous statistical and machine learning tools for joint feature modeli...
When building a predictive model for predicting a clinical outcome using machine learning techniques...
peer reviewedIn this article, we propose a method for evaluating feature ranking algorithms. A featu...
Instance ranking is a subfield of supervised machine learning and is concerned with inferring predic...
We describe a feature selection method that can be applied directly to models that are linear with r...
Abstract: We presented a comparison between several feature ranking methods used on two real dataset...
The paper presents an algorithm to rank features in “small number of samples, large dimensionality” ...
There has been a growing interest in representing real-life applications with data sets having binar...
© 2020 Batugahage Kushani Anuradha PereraFeature selection plays a vital role in machine learning by...
In prediction modeling, the choice of features chosen from the original feature set is crucial for a...
We study the problem of ranking a set of items from nonactively chosen pairwise preferences where ea...
The problem of ranking arises ubiquitously in almost every aspect of life, and in particular in Mach...
An important problem in bioinformatics consists of identifying the most important features (or predi...