Prediction of Hyacinth Handicraft Trends in New Era
Abstract
The purpose of this research is to predict trends of Hyacinth handicraft products based on web application with make order, select products, register member, customer service, summary report and payment notification. The research method is System Development Life Cycle (SDLC) that involves many phases, including planning, design, building, testing, implementing and evaluating. The result of this research is useful for customer who want to order hyacinth handicraft products and it is better way to get their orders. The conclusion of this research showed that Decision Tree (J48) is the appropriate algorithms that can predict hyacinth handicraft trends in new era. It can be said that web application of Hyacinth handicraft is easy to use and can also promote Hyacinth handicraft all time.
Keywords: Classification, Hyacinth, Web application
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