Predicting the Number of People for Meals of an Institutional Foodservice by Applying Machine Learning Methods: S City Hall Case
10.14373/JKDA.2019.25.1.44
- Author:
Jongshik JEON
1
;
Eunju PARK
;
Ohbyung KWON
Author Information
1. School of Management, Kyung Hee University, Seoul 02447, Korea. obkwon@khu.ac.kr
- Publication Type:Original Article
- Keywords:
institutional foodservice;
meal forecasting;
classification model;
machine learning;
big data analytics
- MeSH:
Dietary Supplements;
Holidays;
Machine Learning;
Meals;
Methods;
Seasons;
Weather
- From:Journal of the Korean Dietetic Association
2019;25(1):44-58
- CountryRepublic of Korea
- Language:Korean
-
Abstract:
Predicting the number of meals in a foodservice organization is an important decision-making process that is essential for successful food production, such as reducing the amount of residue, preventing menu quality deterioration, and preventing rising costs. Compared to other demand forecasts, the menu of dietary personnel includes diverse menus, and various dietary supplements include a range of side dishes. In addition to the menus, diverse subjects for prediction are very difficult problems. Therefore, the purpose of this study was to establish a method for predicting the number of meals including predictive modeling and considering various factors in addition to menus which are actually used in the field. For this purpose, 63 variables in eight categories such as the daily available number of people for the meals, the number of people in the time series, daily menu details, weekdays or seasons, days before or after holidays, weather and temperature, holidays or year-end, and events were identified as decision variables. An ensemble model using six prediction models was then constructed to predict the number of meals. As a result, the prediction error rate was reduced from 10%~11% to approximately 6~7%, which was expected to reduce the residual amount by approximately 40%.