FORECASTING THE NUMBER OF ADMISSION OF NEW STUDENTS OF STATE POLITECHNIC USING EXPONENTIAL SINGLE SMOOTING METHODS

Eka Larasati Amalia, Dimas Wahyu Wibowo, Deasy Sandhya Elya

Abstract

Forecasting is a prediction of uncertain events in the future. Forecasting the number of new students is one of the things that can be used for planning materials for the teaching and learning process, therefore it is necessary to predict the number of new students. This research was conducted at Malang State Polytechnic. The annual data analyzed was taken from 2011 to 2017. To predict the number of new students, the Single Exponential Smoothing method was used. This forecasting method focuses on decreasing the priority exponentially on the previous observation object. In exponential smoothing or exponential smoothing there are one or more smoothing parameters determined explicitly, and this result determines the weight imposed on the observation value. Based on the calculation results, the smallest error value is found at the value of α = 0.9 with MAD value 8.41, MAPE 7.21%, and RMSE 10.7.

Full Text:

PDF

References

Dimce Risteski, Andrea Kulakov. 2004. “Single Exponential Smoothing Method and Neural Network in One Method For Time Series Prediction”. Proceedings of the 2004 IEEE, 741-745.

Everette S. Gardner Jr., Joaquin Diaz-Saiz. 2008. “Exponential Smoothing in the Telecommunication Data”. International Journal of Forecasting 24, 170-174.

Heizer, Jay. & Render, Barry. Alih bahasa oleh Sungkono, Chriswan. (2009). Operations Management ( Edisi kesembilan / Jilid I ). Jakarta: PT Salemba Empat.

Jian Kuang., Dongwei Zhai. 2013. “A Network Traffic Prediction Method Using Two-Dimensional Correlation and Single Exponential Smoothing”. Proceedings of ICCT 2013, 404-406.

LI Guan-feng. 2010. “Application of Combined Forecasting Method to Prediction of Demand for the Special Purpose Vehicle in China”. The 2nd International Conference on Information Science and Engineering.

Xiaona Ren. 2011. “A Dynamic Load Balancing Strategy For Cloud Computing Platform Based on Exponential Smoothing Forecast”. Proceedings of IEEE CCIS 2011, 220-224.

YU F. Demand Forcast Based on Exponential Smoothing [J]. Logistics Engineering and Management, 2011, 33(5): 77-78.

DOI

https://doi.org/10.21107/ijseit.v3i2.4507

Metrics

Refbacks

  • There are currently no refbacks.


Copyright (c) 2020 International Journal of Science, Engineering, and Information Technology

Creative Commons License
This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.