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Forecasting Daily Visitors and Menu Demands in an Indonesian Chain Restaurant using Support Vector Regression Machine

机译:使用支持向量回归机器预测每日访客和菜单需求

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Demand fluctuation is a critical factor in the everyday operating choices made by a restaurant. The aim of this study is to investigate menu demand forecasting in restaurants using Multiple Regression and Support Vector Regression Machine (SVR) algorithms to forecast potential visitors and menu demand using point-of-sale (POS) data. A model for predicting store-specific demand is proposed that takes into account variables such as seasonality, public holidays, and order peak times. The model's verification using fundamental restaurant data demonstrates that SVR will produce a percentage error of as low as 14.84 percent when forecasting restaurant guests and 31.2 percent when predicting restaurant menu demand. The results demonstrate that this approach is practical for forecasting revenue and consumer counts, as well as demonstrating that managers will learn about the variables that influence customer behaviors. There are extensive discussions and suggestions for potential studies on predicting and planning management in chain restaurant operations.
机译:需求波动是餐厅日常运营选择中的关键因素。本研究的目的是使用多元回归和支持向量回归机(SVR)算法来调查菜单需求预测,并使用销售点(POS)数据来预测潜在访客和菜单需求。提出了一种预测特定商店特定需求的模型,以考虑季节性,公共假期和订单高峰时间。该模型使用基本餐馆数据的验证表明,在预测餐馆客人的预测时,SVR将产生低至14.84%的百分比误差。结果表明,这种方法对于预测收入和消费者计数以及证明管理人员将学习影响客户行为的变量,这一方法是实用的。有关推动餐厅运营预测和规划管理的潜在研究有广泛的讨论和建议。

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