Selection of study program plays an important role in the
success of a person to determine his future. One of the risks associated with
the selection of study is the incompatibility with the needs of the current job
vacancies in companies that significantly affect the future of these students.
Since there are many criteria that must be considered, then through this
recommender system, students are able to know what fields are the most
appropriate for them. This system is built based on Electre method. When a
student fills out a questionnaire, he must be consistent with his/her answer to
obtain the best output based on his/her will and characteristics. This research
uses descriptive analytical method and presents a summary of the results of
surveys and interviews of 310 colleges in accordance with the codification
which connect with Job Career so it can be a reference to prospective students
in finding employment in the future company
ARSIP Prosiding CITSM 2017
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