Graphics Reference
In-Depth Information
1.6.2.4 Feature Extraction/Instance Generation [ 18 , 20 , 31 ]
Extends both the feature and IS by allowing the modification of the internal values
that represent each example or attribute. In feature extraction, apart from the removal
operation of attributes, subsets of attributes can be merged or can contribute to the
creation of artificial substitute attributes. Regarding instance generation, the process
is similar in the sense of examples. It allows the creation or adjustment of artificial
substitute examples that could better represent the decision boundaries in supervised
learning.
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