NEOct 29, 2020

A brief overview of swarm intelligence-based algorithms for numerical association rule mining

Iztok Fister, Iztok Fister
arXiv:2010.15524v1
Originality Synthesis-oriented
AI Analysis

This is an incremental review for researchers in data mining, summarizing existing methods without introducing new techniques.

The paper provides a historical overview and taxonomy of swarm intelligence-based algorithms for Numerical Association Rule Mining, focusing on their features and efficiency in handling numerical attributes without discretization.

Numerical Association Rule Mining is a popular variant of Association Rule Mining, where numerical attributes are handled without discretization. This means that the algorithms for dealing with this problem can operate directly, not only with categorical, but also with numerical attributes. Until recently, a big portion of these algorithms were based on a stochastic nature-inspired population-based paradigm. As a result, evolutionary and swarm intelligence-based algorithms showed big efficiency for dealing with the problem. In line with this, the main mission of this chapter is to make a historical overview of swarm intelligence-based algorithms for Numerical Association Rule Mining, as well as to present the main features of these algorithms for the observed problem. A taxonomy of the algorithms was proposed on the basis of the applied features found in this overview. Challenges, waiting in the future, finish this paper.

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