For supervised learning, feature selection algorithms attemptto maximise a given function of predictive accuracy.This function usually considers the ability of feature vectorsto reflect decision class labels. It is therefore intuitive to retainonly those features that are related to or lead to thesedecision classes. However, in unsupervised learning, decisionclass labels are not provided, which poses questionssuch as; which features should be retained? and, why notuse all of the information? The problem is that not all featuresare important. Some of the features may be redundant,and others may be irrelevant and noisy. In this paper, somenew fuzzy-rough set-based approaches to unsupervised featureselection are proposed. These approaches requ...
One of the main obstacles facing current intelligent pattern recognition applications is that of dat...
There has been great interest in developing methodologies that are capable of dealing with imprecisi...
Attribute selection (AS) refers to the problem of selecting those input attributes or features that ...
For supervised learning, feature selection algorithms attemptto maximise a given function of predict...
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 at-tempt to maximise a given function of predi...
Each year worldwide, more and more data is collected. In fact, it is estimated that the amount of da...
Each year worldwide, more and more data is collected. In fact, it is estimated that the amount of da...
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...
Dataset dimensionality is undoubtedly the single most significant obstacle which exasperates any att...
There has been great interest in developing methodologies that are capable of dealing with imprecisi...
Dataset dimensionality is undoubtedly the single most significant obstacle which exasperates any att...
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...
There has been great interest in developing methodologies that are capable of dealing with imprecisi...
Attribute selection (AS) refers to the problem of selecting those input attributes or features that ...
For supervised learning, feature selection algorithms attemptto maximise a given function of predict...
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 at-tempt to maximise a given function of predi...
Each year worldwide, more and more data is collected. In fact, it is estimated that the amount of da...
Each year worldwide, more and more data is collected. In fact, it is estimated that the amount of da...
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...
Dataset dimensionality is undoubtedly the single most significant obstacle which exasperates any att...
There has been great interest in developing methodologies that are capable of dealing with imprecisi...
Dataset dimensionality is undoubtedly the single most significant obstacle which exasperates any att...
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...
There has been great interest in developing methodologies that are capable of dealing with imprecisi...
Attribute selection (AS) refers to the problem of selecting those input attributes or features that ...