The last two decades have seen many powerful classification systems being built for large-scale real-world applications. However, for all their accuracy, one of the persistent obstacles facing these systems is that of data dimensionality. To enable such systems to be effective, a redundancy-removing step is usually required to pre-process the given data. Rough set theory offers a useful, and formal, methodology that can be employed to reduce the dimensionality of datasets. It helps select the most information rich features in a dataset, without transforming the data, all the while attempting to minimise information loss during the selection process. Based on this observation, this paper discusses an approach for semantics-preserving dimensi...
One of the main obstacles facing the application of computational intelligence technologies in patte...
Dataset dimensionality is undoubtedly the single most significant obstacle which exasperates any att...
Attribute selection (AS) refers to the problem of selecting those input attributes or features that ...
The last two decades have seen many powerful classification systems being built for large-scale real...
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...
One of the main obstacles facing current intelligent pattern recognition applications is that of dat...
One of the main obstacles facing current intelligent pattern recognition applications is that of dat...
For supervised learning, feature selection algorithms attempt to maximise a given function of predic...
For supervised learning, feature selection algorithms attempt to maximise a given function of predic...
For supervised learning, feature selection algorithms attemptto maximise a given function of predict...
Of all of the challenges which face the effective application of computational intelligence technolo...
For supervised learning, feature selection algorithms attemptto maximise a given function of predict...
Of all of the challenges which face the effective application of computational intelligence technolo...
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...
Dataset dimensionality is undoubtedly the single most significant obstacle which exasperates any att...
Attribute selection (AS) refers to the problem of selecting those input attributes or features that ...
The last two decades have seen many powerful classification systems being built for large-scale real...
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...
One of the main obstacles facing current intelligent pattern recognition applications is that of dat...
One of the main obstacles facing current intelligent pattern recognition applications is that of dat...
For supervised learning, feature selection algorithms attempt to maximise a given function of predic...
For supervised learning, feature selection algorithms attempt to maximise a given function of predic...
For supervised learning, feature selection algorithms attemptto maximise a given function of predict...
Of all of the challenges which face the effective application of computational intelligence technolo...
For supervised learning, feature selection algorithms attemptto maximise a given function of predict...
Of all of the challenges which face the effective application of computational intelligence technolo...
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...
Dataset dimensionality is undoubtedly the single most significant obstacle which exasperates any att...
Attribute selection (AS) refers to the problem of selecting those input attributes or features that ...