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Improved fuzzy weighted‐iterative association rule based ontology postprocessing in data mining for query recommendation applications

G. Sumathi, J. Akilandeswari

2020Computational Intelligence18 citationsDOI

Abstract

Abstract The usage of association rules is playing a vital role in the field of knowledge data discovery. Numerous rules have to be processed and plot based on the ranges on the schema. The step in this process depends on the user's queries. Previously, several projects have been proposed to reduce work and improve filtration processes. However, they have some limitations in preprocessing time and filtration rate. In this article, an improved fuzzy weighted‐iterative concept is introduced to overcome the limitation based on the user request and visualization of discovering rules. The initial step includes the mix of client learning with posthandling to use the semantics. The above advance was trailed by surrounding rule schemas to fulfill and anticipate unpredictable guidelines dependent on client desires. Preparing the above developments can be imagined by the use of yet another clever method of study. Standards on guidelines are recognized by the average learning professionals.

Topics & Concepts

Computer scienceAssociation rule learningData miningSchema (genetic algorithms)PreprocessorFuzzy logicIterative and incremental developmentOntologyVisualizationInformation retrievalArtificial intelligenceMachine learningSoftware engineeringEpistemologyPhilosophyData Management and AlgorithmsSemantic Web and OntologiesData Mining Algorithms and Applications