Job Selection of the Infrastructure Section in Foundation X with C4.5 Algorithm

Authors

  • Sunjana Computer Science, Faculty of Engineering, Widyatama University Jln. Cikutra 20124 A, Bandung 40125, Indonesia Author
  • Yan Puspitarani Computer Science, Faculty of Engineering, Widyatama University Jln. Cikutra 20124 A, Bandung 40125, Indonesia Author

DOI:

https://doi.org/10.61841/f0w3dh12

Keywords:

Algoritma C4.5, Jenis Pekerjaan, Kelayakan, Pohon Keputusan

Abstract

An institution generally requires a draft job that costs must be prepared well in advance. In relation to the effectiveness of time and budget efficiency, a mechanism is needed for ease in determining criteria or feasibility of a royalty to be included in the budget plan. This needs to be prepared every fiscal year, not least as the X Foundation's Infrastructure Section and Infrastructure do. To obtain the ease of decision-making with respect to the feasibility of the type of work to be budgeted within the RAB, the Infrastructure Section shall make predictions and classifications of the various types of work for which data has been recorded. For this purpose, Algorithm C4.5 can be utilized in conducting clustering processes or work classification based on information / data available. With the help of the C4.5 algorithm, the classification process can produce a decision tree associated with the type of work that is feasible to prepare in the RAB in the coming year. The decision-making process is done by processing existing data, and it is important for the institutional sustainability process in moving a company's business process. With the results that have been obtained, Section of Facilities & Infrastructure will be easier in doing the cost draft, which is subsequently submitted to RAB Yayasan X University. 

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Published

30.04.2020

How to Cite

Sunjana, & Puspitarani, Y. (2020). Job Selection of the Infrastructure Section in Foundation X with C4.5 Algorithm. International Journal of Psychosocial Rehabilitation, 24(2), 3222-3231. https://doi.org/10.61841/f0w3dh12