Jyothi Pillai
HURI - A novel algorithm for mining high utility rare itemsets
Pillai, Jyothi; Vyas, O.P.; Muyeba, Maybin
Authors
Contributors
J. Pillai
Other
O.P. Vyas
Other
Dr Maybin Muyeba K.M.Muyeba@salford.ac.uk
Other
Abstract
In Data mining field, the primary task is to mine frequent itemsets from a transaction database using Association Rule Mining (ARM). Utility Mining aims to identify itemsets with high utilities by considering profit, quantity, cost or other user preferences. In market basket analysis, high consideration should be given to utility of item in a transaction, since items having low selling frequencies may have high profits. As a result, High Utility Itemset Mining emerged as a revolutionary field in Data Mining. Rare itemsets provide useful information in different decision-making domains. High Utility Rare Itemset Mining, HURI algorithm proposed in [12], generate high utility rare itemsets of users’ interest. HURI is a two-phase algorithm, phase 1 generates rare itemsets and phase 2 generates high utility rare itemsets, according to users’ interest. In this paper, performance evaluation and complexity analysis of HURI algorithm, based on different parameters have been discussed which indicates the efficiency of HURI.
Presentation Conference Type | Conference Paper (published) |
---|---|
Conference Name | Proceedings of the Second International Conference on Advances in Computing and Information technology (ACITY 2012) |
Start Date | Jul 13, 2012 |
End Date | Jul 15, 2012 |
Publication Date | 2013 |
Deposit Date | Apr 7, 2025 |
Peer Reviewed | Peer Reviewed |
Volume | 177 |
Pages | 531–540 |
ISBN | 978-3-642-31551-0 |
DOI | https://doi.org/10.1007/978-3-642-31552-7_54 |
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