Abstract
We present a framework that we are currently developing, that
allows one to extract knowledge from the knowledge discovery in database
(KDD) dataset. Data mining is a very active and space growing research area.
Knowledge discovery in databases (KDD) is very useful in scientific domains.
In simple terms, association rule mining is one of the most well-known
methods for such knowledge discovery. Initially, database are divided into
training and testing for the aid of fuzzy generating the rules using fuzzy rules
generation the set of rules are generated from the given dataset. From the
generated rules, we are extracting the significant rules by using the improved
artificial bee colony algorithm and cuckoo search algorithm (IABCCS). After
extracting optimal knowledge from the dataset via rules, the data will be
classified using fuzzy classifier with the aid of this finally we will classify the
attack and normal.