Ant Miner: A Hybrid Pittsburgh Style Classification Rule Mining Algorithm

Ant Miner: A Hybrid Pittsburgh Style Classification Rule Mining Algorithm

Bijaya Kumar Nanda, Satchidananda Dehuri
DOI: 10.4018/IJAIML.2020010104
Article PDF Download
Open access articles are freely available for download

Abstract

In data mining the task of extracting classification rules from large data is an important task and is gaining considerable attention. This article presents a novel ant miner for classification rule mining. The ant miner is inspired by researches on the behaviour of real ant colonies, simulated annealing, and some data mining concepts as well as principles. This paper presents a Pittsburgh style approach for single objective classification rule mining. The algorithm is tested on a few benchmark datasets drawn from UCI repository. The experimental outcomes confirm that ant miner-HPB (Hybrid Pittsburgh Style Classification) is significantly better than ant-miner-PB (Pittsburgh Style Classification).
Article Preview
Top

2. Preliminaries

In this section, we discuss two basic algorithmic paradigms like ant colony optimization and simulated annealing in following Subsections.

Complete Article List

Search this Journal:
Reset
Volume 13: 1 Issue (2024)
Volume 12: 2 Issues (2022)
Volume 11: 2 Issues (2021)
Volume 10: 2 Issues (2020)
Volume 9: 2 Issues (2019)
View Complete Journal Contents Listing