ANALYSIS OF SERVICE SATISFACTION LEVEL USING ROUGH SET ALGORITHM

  • Jonhariono Sihotang STMIK Mikroskil
Keywords: data mining, roughest, service

Abstract

Data mining Is a technique that combines traditional data analysis techniques with algorithms for processing large amounts of data. Data mining can be used to perform data analysis and find important patterns in data. Data mining will be a benchmark or reference for making data mining processing decisions that can be done with the Rough Set method. Rough Set Method is one of the methods above that allows us to make decisions in hotel services because in this method there are formulations or stages of problem mechanics and a Result (decision) of a combination that may occur from the criteria above. From the results (decisions) derived from the processed data mining, it can be used as a reference for decision making. The Rought Set Method is a mathematical technique developed since 1980.

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Published
2020-06-19
How to Cite
Sihotang, J. (2020). ANALYSIS OF SERVICE SATISFACTION LEVEL USING ROUGH SET ALGORITHM. INFOKUM, 8(2, Juni), 55-56. Retrieved from http://infor.seaninstitute.org/index.php/infokum/article/view/17