Blackbox Testing Using Fuzzy Clustering Based on Boundary Value Analysis on The Text Opinion Mining Application in Traditional Culture Arts Presentation


  • Anis Zubair Information Technology, University of Merdeka Malang, Malang, Indonesia
  • Elta Sonalitha Electrical Engineering, University of Merdeka Malang, Malang, Indonesia
  • Salnan Ratih Information Technology, Brawijaya University, Malang, Indonesia
  • Bambang Nurdewanto Information Technology, University of Merdeka Malang, Malang, Indonesia
  • Kukuh Yudhistiro Information Technology, University of Merdeka Malang, Malang, Indonesia
  • Irfan Mujahidin Electrical Engineering, University of Merdeka Malang, Malang, Indonesia



text mining, fuzzy clustering, art, black-box testing


The success of organizing a traditional work of art cannot be separated from the important role of data and information obtained from the public in general, and viewers or art connoisseurs in particular. This information is an indicator that can be used to measure the amount of public attention to traditional arts, which is an effort to promote traditional cultural arts. Data and information related to traditional artworks were obtained from filling out the instruments that were distributed to the public online to produce an opinion form that contained a complete description with a discussion containing the aesthetic of the artwork. Opinion data is needed as a measure of progress and preservation of a work of art. The linguistic measurement of opinion can be solved using fuzzy methods in a cryptic form that can be weighted. In this study, the authors tested the audience opinion text mining application on the presentation of traditional cultural artworks using fuzzy clustering using the functional testing method (Black box testing). Through this test will be discussed related to the menu or module to produce information.


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