Review

A Survey on Analysis of Data Mining Algorithms for High Utility Itemsets

Volume: 9 Number: 3 September 30, 2022
TR EN

A Survey on Analysis of Data Mining Algorithms for High Utility Itemsets

Abstract

High-Utility-Itemset Mining (HUIM) is meant to detect extremely important trends by considering the purchasing quantity and product benefits of items. For static databases, most of the measurements are expected. In real time applications, such as the market basket review, company decision making and web administration organization results, large quantities of datasets are slowly evolving with new knowledge incorporated. The usual mining calculations cannot handle such complex databases and retrieve useful data. The essential task of data collection in a quantifiable sequence dataset is to determine entirely high utility sequences. The number of sequences found is always extremely high, though useful. This article studies the issue of the mining of repeated high utility sequence that meet item restrictions in order to identify patents that are more suited to the needs of a customer. Also, this article introduces high-value element set mining, examines modern algorithms, their extensions, implementations, and explores research opportunities.

Keywords

References

  1. Chu, Chun Jung, Vincent S. Tseng, and Tyne Liang. 2009. “An Efficient Algorithm for Mining High Utility Itemsets with Negative Item Values in Large Databases.” Applied Mathematics and Computation 215(2): 767–78.
  2. Dam, Thu Lan, Kenli Li, Philippe Fournier-Viger, and Quang Huy Duong. 2017. “An Efficient Algorithm for Mining Top-k on-Shelf High Utility Itemsets.” Knowledge and Information Systems 52(3): 621–55.
  3. Dawar, Siddharth. 2021. “Mining High-Utility Itemsets From A Transaction Database.” http://repository.iiitd.edu.in/xmlui/handle/123456789/887 (June 15, 2021).
  4. Dinh, Duy Tai, Bac Le, Philippe Fournier-Viger, and Van Nam Huynh. 2018. “An Efficient Algorithm for Mining Periodic High-Utility Sequential Patterns.” Applied Intelligence 48(12): 4694–4714.
  5. Dong, Xiangjun et al. 2019. “Mining Top- k Useful Negative Sequential Patterns via Learning.” IEEE transactions on neural networks and learning systems 30(9): 2764–78.
  6. Duan, Yiheng et al. 2015. “Detective: Automatically Identify and Analyze Malware Processes in Forensic Scenarios via DLLs.” In IEEE International Conference on Communications, Institute of Electrical and Electronics Engineers Inc., 5691–96.
  7. Duong, Hai, Tin Truong, Anh Tran, and Bac Le. 2020. “Fast Generation of Sequential Patterns with Item Constraints from Concise Representations.” Knowledge and Information Systems 62(6): 2191–2223.
  8. Duong, Quang Huy et al. 2018. “Efficient High Utility Itemset Mining Using Buffered Utility-Lists.” Applied Intelligence 48(7): 1859–77. Fournier-Viger, Philippe et al. 2021. “Discovering Periodic High Utility Itemsets in a Discrete Sequence.” In Periodic Pattern Mining: Theory, Algorithms and Applications,.

Details

Primary Language

English

Subjects

Engineering

Journal Section

Review

Publication Date

September 30, 2022

Submission Date

March 16, 2022

Acceptance Date

August 22, 2022

Published in Issue

Year 2022 Volume: 9 Number: 3

APA
Nellutla, A., & N, S. (2022). A Survey on Analysis of Data Mining Algorithms for High Utility Itemsets. El-Cezeri, 9(3), 1085-1100. https://doi.org/10.31202/ecjse.1075528
AMA
1.Nellutla A, N S. A Survey on Analysis of Data Mining Algorithms for High Utility Itemsets. El-Cezeri Journal of Science and Engineering. 2022;9(3):1085-1100. doi:10.31202/ecjse.1075528
Chicago
Nellutla, Aditya, and Srinivasan N. 2022. “A Survey on Analysis of Data Mining Algorithms for High Utility Itemsets”. El-Cezeri 9 (3): 1085-1100. https://doi.org/10.31202/ecjse.1075528.
EndNote
Nellutla A, N S (September 1, 2022) A Survey on Analysis of Data Mining Algorithms for High Utility Itemsets. El-Cezeri 9 3 1085–1100.
IEEE
[1]A. Nellutla and S. N, “A Survey on Analysis of Data Mining Algorithms for High Utility Itemsets”, El-Cezeri Journal of Science and Engineering, vol. 9, no. 3, pp. 1085–1100, Sept. 2022, doi: 10.31202/ecjse.1075528.
ISNAD
Nellutla, Aditya - N, Srinivasan. “A Survey on Analysis of Data Mining Algorithms for High Utility Itemsets”. El-Cezeri 9/3 (September 1, 2022): 1085-1100. https://doi.org/10.31202/ecjse.1075528.
JAMA
1.Nellutla A, N S. A Survey on Analysis of Data Mining Algorithms for High Utility Itemsets. El-Cezeri Journal of Science and Engineering. 2022;9:1085–1100.
MLA
Nellutla, Aditya, and Srinivasan N. “A Survey on Analysis of Data Mining Algorithms for High Utility Itemsets”. El-Cezeri, vol. 9, no. 3, Sept. 2022, pp. 1085-00, doi:10.31202/ecjse.1075528.
Vancouver
1.Aditya Nellutla, Srinivasan N. A Survey on Analysis of Data Mining Algorithms for High Utility Itemsets. El-Cezeri Journal of Science and Engineering. 2022 Sep. 1;9(3):1085-100. doi:10.31202/ecjse.1075528
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