Classification aims to identify a class label of an instance according to the information from its characteristics or features. Unfortunately, many classification problems have a large feature set containing irrelevant and redundant features, which reduce the classification performance. In order to address the above problem, feature selection is proposed to select a small subset of relevant features. There are three main types of feature selection methods, i.e. wrapper, embedded and filter approaches. Wrappers use a classification algorithm to evaluate candidate feature subsets. In embedded approaches, the selection process is embedded in the training process of a classification algorithm. Different from the other two approaches, filters do...
More and more high-dimensional data appears in machine learning, especially in classification tasks....
More and more high-dimensional data appears in machine learning, especially in classification tasks....
Classification problems often have a large number of features in the data sets, but not all of them ...
Classification aims to identify a class label of an instance according to the information from its c...
Classification aims to identify a class label of an instance according to the information from its c...
Classification problems often have a large number of features, but not all of them are useful for cl...
Classification problems often have a large number of features, but not all of them are useful for cl...
Classification problems often have a large number of features, but not all of them are useful for cl...
Classification problems often have a large number of features, but not all of them are useful for cl...
Feature selection is an important data preprocessing step in machine learning and data mining, such ...
Feature selection is an important data preprocessing step in machine learning and data mining, such ...
Feature selection is an important data preprocessing step in machine learning and data mining, such ...
© 2015 Imperial College Press. Feature selection is an important data preprocessing step in machine ...
Classification problems often have a large number of features in the data sets, but not all of them ...
More and more high-dimensional data appears in machine learning, especially in classification tasks....
More and more high-dimensional data appears in machine learning, especially in classification tasks....
More and more high-dimensional data appears in machine learning, especially in classification tasks....
Classification problems often have a large number of features in the data sets, but not all of them ...
Classification aims to identify a class label of an instance according to the information from its c...
Classification aims to identify a class label of an instance according to the information from its c...
Classification problems often have a large number of features, but not all of them are useful for cl...
Classification problems often have a large number of features, but not all of them are useful for cl...
Classification problems often have a large number of features, but not all of them are useful for cl...
Classification problems often have a large number of features, but not all of them are useful for cl...
Feature selection is an important data preprocessing step in machine learning and data mining, such ...
Feature selection is an important data preprocessing step in machine learning and data mining, such ...
Feature selection is an important data preprocessing step in machine learning and data mining, such ...
© 2015 Imperial College Press. Feature selection is an important data preprocessing step in machine ...
Classification problems often have a large number of features in the data sets, but not all of them ...
More and more high-dimensional data appears in machine learning, especially in classification tasks....
More and more high-dimensional data appears in machine learning, especially in classification tasks....
More and more high-dimensional data appears in machine learning, especially in classification tasks....
Classification problems often have a large number of features in the data sets, but not all of them ...