Association Rules Optimization using ABC Algorithm with Mutation

Association Rules Optimization using ABC Algorithm with Mutation

Paperback 
Price: £34.31
UK delivery included
In stock
Print on demand - Usually dispatched within 7-10 days
Make and edit your lists in your account
wordery
has a fantastic rating on
In stock
Print on demand - Usually dispatched within 7-10 days
wordery
has a fantastic rating on

Synopsis

In data mining, association rule mining is one of the popular and simple methods to find frequent itemsets from a large dataset. While generating frequent itemsets from a large dataset using association rule mining, the computer takes too much time. This can be improved by using an artificial bee colony algorithm (ABC). The artificial bee colony algorithm is an optimization algorithm based on the foraging behavior of artificial honey bees. In this paper, an artificial bee colony algorithm with a mutation operator is used to generate high-quality association rules for finding frequent itemsets from large data sets. The mutation operator is used after the scout bee phase in this work. In general, the rule generated by the association rule mining technique does not consider the negative occurrences of attributes in them, but by using an artificial bee colony algorithm (ABC) over these rules the system can predict the rules which contain negative attributes.

Publisher information

  • Publisher: LAP Lambert Academic Publishing
  • ISBN: 9786202680349
  • Dimensions: 220 x 150 mm
  • Languages: English