Temporal association rules discovery algorithm based on improved index tree
Publicado en línea: 19 mar 2021
Páginas: 115 - 128
Recibido: 01 dic 2020
Aceptado: 31 ene 2021
DOI: https://doi.org/10.2478/amns.2021.1.00016
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© 2020 Chen Yuanyuan et al., published by Sciendo
This work is licensed under the Creative Commons Attribution 4.0 International License.
With the rapid increase of information generated from all kinds of sources, temporal big data mining in business area has been paid more and more attention recently. A novel data mining algorithm for mining temporal association is proposed. Mining temporal association can not only provide better predictability for customer behaviour but also help organisations with better strategies and marketing decisions. To compare the proposed algorithm, two methods to mine temporal association are presented. One is improved based on a traditional mining algorithm, Apriori. The other is based on an Index-Tree. Moreover, the proposed method is extended to mine temporal association in multi-dimensional space. The experimental results show that the Index-Tree method outperforms the Apriori-modified method in all cases.