SALETI, Sumalatha, TANGIRALA, Jaya Lakshmi and AHMAD, Mohd Wazih (2022). Mining High Utility Time Interval Sequences Using MapReduce Approach: Multiple Utility Framework. IEEE Access, 10, 123301-123315. [Article]
Documents
33298:638455
PDF
Gebreslassie-MiningHighUtility(VoR).pdf - Published Version
Available under License Creative Commons Attribution.
Gebreslassie-MiningHighUtility(VoR).pdf - Published Version
Available under License Creative Commons Attribution.
Download (1MB) | Preview
Abstract
Mining high utility sequential patterns is observed to be a significant research in data mining. Several methods mine the sequential patterns while taking utility values into consideration. The patterns of this type can determine the order in which items were purchased, but not the time interval between them. The time interval among items is important for predicting the most useful real-world circumstances, including retail market basket data analysis, stock market fluctuations, DNA sequence analysis, and so on. There are a very few algorithms for mining sequential patterns those consider both the utility and time interval. However, they assume the same threshold for each item, maintaining the same unit profit. Moreover, with the rapid growth in data, the traditional algorithms cannot handle the big data and are not scalable. To handle this problem, we propose a distributed three phase MapReduce framework that considers multiple utilities and suitable for handling big data. The time constraints are pushed into the algorithm instead of pre-defined intervals. Also, the proposed upper bound minimizes the number of candidate patterns during the mining process. The approach has been tested and the experimental results show its efficiency in terms of run time, memory utilization, and scalability.
More Information
Statistics
Downloads
Downloads per month over past year
Metrics
Altmetric Badge
Dimensions Badge
Share
Actions (login required)
View Item |