Article Details

A Study on Feature Selection Algorithm | Original Article

Aarti Kaushik*, Vijay Pal Singh, in Journal of Advances and Scholarly Researches in Allied Education | Multidisciplinary Academic Research

ABSTRACT:

The classifier and that most proposed techniques are univariate which means that each feature is considered separately, thereby ignoring feature dependencies, which may lead to worse classification performance when compared to other types of feature selection techniques. In order to overcome the problem of ignoring feature dependencies, a number of multivariate filter techniques were introduced, aiming at the incorporation of feature dependencies to some degree. Wrapper methods embed the model hypothesis search within the feature subset search. In the wrapper approach the attribute selection method uses the result of the data mining algorithm to determine how good a given attribute subset is. In this setup, a search procedure in the space of possible feature subsets is defined, and various subsets of features are generated and evaluated. The major characteristic of the wrapper approach is that the quality of an attribute subset is directly measured by the performance of the data mining algorithm applied to that attribute subset. The wrapper approach tends to be much slower than the filter approach, as the data mining algorithm is applied to each attribute subset considered by the search. In addition, if several different data mining algorithms are to be applied to the data, the wrapper approach becomes even more computationally expensive.