Study about Rule Mining for Multiple Tables with Fuzzy Data

Arora, Praveen and Gandhi, Priyanka and Sharma, Geeta and Saxena, Sanjive (2022) Study about Rule Mining for Multiple Tables with Fuzzy Data. In: Novel Research Aspects in Mathematical and Computer Science Vol. 1. B P International, pp. 38-47. ISBN 978-93-5547-172-7

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Abstract

The research takes the track of mining association rules in databases with many tables and fuzzy data along with its taxonomy. Many data mining algorithms have been developed to deal with databases that are made up of a single table with fuzzy taxonomic structures constructed on top of it. This study uses fuzzy data from several tables, which were created using ER models, and each entity table maintains information on all attributes connected with a certain object, while the relationship table represents relationships between distinct entities. The study's major goal is to handle many tables at multiple levels. The study's objective is to create a new algorithm by combining the previously published algorithms Extended Apriori and Apriori star. The research will aid in the identification of relevant outcomes from database tables containing ambiguous data.

Item Type: Book Section
Subjects: Euro Archives > Mathematical Science
Depositing User: Managing Editor
Date Deposited: 12 Oct 2023 04:55
Last Modified: 12 Oct 2023 04:55
URI: http://publish7promo.com/id/eprint/3376

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