Of all of the challenges which face the effective application of computational intelligence technologies for pattern recognition, dataset dimensionality is undoubtedly one of the primary impediments. In order for pattern classifiers to be efficient, a dimensionality reduction stage is usually performed prior to classification. Much use has been made of rough set theory for this purpose as it is completely data-driven and no other information is required; most other methods require some additional knowledge. However, traditional rough set-based methods in the literature are restricted to the requirement that all data must be discrete. It is therefore not possible to consider real-valued or noisy data. This is usually addressed by employing a...
Semantics-preserving dimensionality reduction refers to the problem of selecting those input feature...
Semantics-preserving dimensionality reduction refers to the problem of selecting those input feature...
Feature selection aims to determine a minimal feature subset from a problem domain while retaining a...
Of all of the challenges which face the effective application of computational intelligence technolo...
Of all of the challenges which face the effective application of computational intelli-gence technol...
One of the main obstacles facing the application of computational intelligence technologies in patte...
One of the main obstacles facing the application of computational intelligence technologies in patte...
The last two decades have seen many powerful classification systems being built for large-scale real...
The last two decades have seen many powerful classification systems being built for large-scale real...
Feature Selection (FS) or Attribute Reduction techniques are employed for dimensionality reduction a...
Feature Selection (FS) or Attribute Reduction techniques are employed for dimensionality reduction a...
Feature Selection (FS) is a technique for dimensionality reduction. Its aims are to select a subset ...
Feature Selection (FS) is a technique for dimensionality reduction. Its aims are to select a subset ...
Data reduction is an important step in knowledge discovery from data. The high dimensionality of dat...
Data reduction is an important step in knowledge discovery from data. The high dimensionality of dat...
Semantics-preserving dimensionality reduction refers to the problem of selecting those input feature...
Semantics-preserving dimensionality reduction refers to the problem of selecting those input feature...
Feature selection aims to determine a minimal feature subset from a problem domain while retaining a...
Of all of the challenges which face the effective application of computational intelligence technolo...
Of all of the challenges which face the effective application of computational intelli-gence technol...
One of the main obstacles facing the application of computational intelligence technologies in patte...
One of the main obstacles facing the application of computational intelligence technologies in patte...
The last two decades have seen many powerful classification systems being built for large-scale real...
The last two decades have seen many powerful classification systems being built for large-scale real...
Feature Selection (FS) or Attribute Reduction techniques are employed for dimensionality reduction a...
Feature Selection (FS) or Attribute Reduction techniques are employed for dimensionality reduction a...
Feature Selection (FS) is a technique for dimensionality reduction. Its aims are to select a subset ...
Feature Selection (FS) is a technique for dimensionality reduction. Its aims are to select a subset ...
Data reduction is an important step in knowledge discovery from data. The high dimensionality of dat...
Data reduction is an important step in knowledge discovery from data. The high dimensionality of dat...
Semantics-preserving dimensionality reduction refers to the problem of selecting those input feature...
Semantics-preserving dimensionality reduction refers to the problem of selecting those input feature...
Feature selection aims to determine a minimal feature subset from a problem domain while retaining a...