AbstractFeature selection is one of the crucial steps in supervised learning, which influences the entire subsequent classification (or regression) process. The approaches to this task can largely be divided into two categories: filter-based and wrapper-based methods. Generally, the latter produces better results than the former with regard to given learning methods, though it consumes more computational resources for searches over the feature subset space. In this paper, we propose an Efficient wRapper based on a Paired t-Test (ERPT) for choosing features from large-scale data consisting of thousands of variables, such as microarrays. Statistical tests are a reasonable option when the number of features is very large because they have more...
Feature selection is demanded in many modern scientific research problems that use high-dimensional ...
In this work, we suggest a new feature selection technique that lets us use the wrapper approach for...
Recent work has shown that feature subset selection can have a position affect on the performance of...
AbstractFeature selection is one of the crucial steps in supervised learning, which influences the e...
The high-dimensionality of Big Data poses challenges in data understanding and visualization. Furthe...
Due to its linear complexity, naive Bayes classification remains an attractive supervised learning m...
International audienceWe compare in this paper several feature selection methods for the Naive Bayes...
Microarray data usually contain a large number of genes, but a small number of samples. Feature subs...
Scheme-specific attribute selection with the wrapper and variants of forward selection is a popular ...
The problem of feature selection is critical in several areas of machine learning and data analysis ...
The Naive Bayes has proven to be a tractable and efficient method for classification in multivariate...
Abstract—The explosive growth of big data poses a processing challenge for predictive systems in ter...
AbstractA new method for Feature Subset Selection in machine learning, FSS-EBNA (Feature Subset Sele...
Feature selection approach solves the dimensionality problem by removing irrelevant and redundant fe...
© 2020 Batugahage Kushani Anuradha PereraFeature selection plays a vital role in machine learning by...
Feature selection is demanded in many modern scientific research problems that use high-dimensional ...
In this work, we suggest a new feature selection technique that lets us use the wrapper approach for...
Recent work has shown that feature subset selection can have a position affect on the performance of...
AbstractFeature selection is one of the crucial steps in supervised learning, which influences the e...
The high-dimensionality of Big Data poses challenges in data understanding and visualization. Furthe...
Due to its linear complexity, naive Bayes classification remains an attractive supervised learning m...
International audienceWe compare in this paper several feature selection methods for the Naive Bayes...
Microarray data usually contain a large number of genes, but a small number of samples. Feature subs...
Scheme-specific attribute selection with the wrapper and variants of forward selection is a popular ...
The problem of feature selection is critical in several areas of machine learning and data analysis ...
The Naive Bayes has proven to be a tractable and efficient method for classification in multivariate...
Abstract—The explosive growth of big data poses a processing challenge for predictive systems in ter...
AbstractA new method for Feature Subset Selection in machine learning, FSS-EBNA (Feature Subset Sele...
Feature selection approach solves the dimensionality problem by removing irrelevant and redundant fe...
© 2020 Batugahage Kushani Anuradha PereraFeature selection plays a vital role in machine learning by...
Feature selection is demanded in many modern scientific research problems that use high-dimensional ...
In this work, we suggest a new feature selection technique that lets us use the wrapper approach for...
Recent work has shown that feature subset selection can have a position affect on the performance of...