ADX Algorithm: a brief description of a rule based classifier
نویسنده
چکیده
In this paper, a new rule based classifier is presented. ADX is an algorithm for inductive learning and for later classification of objects. As is typical for rule systems, an knowledge representation is easy to understand by a human. The power of ADX algorithm is that rules are not too complicated and learning time increases linearly with the size of dataset. The new elements in this work are measures for selection of rules as well as decision making process.
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