Improving Efficiency of High Utility Sequential Pattern Extraction

Authors

  • Vikrant Sharma

DOI:

https://doi.org/10.17762/msea.v70i1.2304

Abstract

Text mining used on texts and publications in the biomedical and molecular biology fields is referred to as "biomedical text mining." It is a relatively new area of study at the intersection of computational linguistics, bioinformatics, and natural language processing. Superior usefulness the goal of sequential pattern mining is to identify statistically significant patterns among data instances when the values are presented sequentially. Time series mining is typically regarded as a distinct activity even if it is closely linked since it is typically assumed that the values are discrete. Structured data mining has a unique use known as sequential pattern mining. High utility pattern (HUP) mining is one of the most relevant study areas in data mining nowadays since it is capable of taking into consideration the nonbinary frequency values of items in transactions as well as different profit values for each item. The utilization of previous data structures as well as mining outcomes, yet, enables incremental and interactive data mining to eliminate the need for further calculations when a database is updated or the minimum threshold is modified. The method in this study suggests three innovative tree architectures for effective incremental and interactive HUP mining. The high utility sequential pattern mining issue has formalised key ideas and elements.

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Published

2021-01-31

How to Cite

Sharma, V. . (2021). Improving Efficiency of High Utility Sequential Pattern Extraction. Mathematical Statistician and Engineering Applications, 70(1), 234–242. https://doi.org/10.17762/msea.v70i1.2304

Issue

Section

Articles