Accurate demand forecasting is one of the key aspects for successfully managing restaurants and staff canteens. In particular, properly predicting future sales of menu items allows a precise ordering of food stock. From an environmental point of view, this ensures maintaining a low level of pre-consumer food waste, while from the managerial point of view, this is critical to guarantee the profitability of the restaurant. Hence, we are interested in predicting future values of the daily sold quantities of given menu items. The corresponding time series show multiple strong seasonalities, trend changes, data gaps, and outliers. We propose a forecasting approach that is solely based on the data retrieved from Point of Sales systems and allows for a straightforward human interpretation. Therefore, we propose two generalized additive models for predicting the future sales. In an extensive evaluation, we consider two data sets collected at a casual restaurant and a large staff canteen consisting of multiple time series, that cover a period of 20 months, respectively. We show that the proposed models fit the features of the considered restaurant data. Moreover, we compare the predictive performance of our method against the performance of other well-established forecasting approaches.
翻译:准确的需求预测是成功管理餐厅和工作人员食堂的关键方面之一。特别是,适当预测菜单项目的未来销售量可以准确排序食品存量。从环境角度看,这可以确保维持低消费前食品浪费水平,而从管理角度看,这对于保证餐厅的利润至关重要。因此,我们有兴趣预测某菜单项目日销售量的未来价值。相应的时间序列显示多种强烈的季节性、趋势变化、数据差距和离线。我们建议一种预测方法,仅以从销售点系统检索的数据为基础,并允许对食品进行直截了当的解读。因此,我们提出了两种通用的添加模型,用于预测今后的销售量。在一项广泛的评估中,我们考虑在一家临时餐厅和一家大型员工食堂收集的两套数据,由多个时间序列组成,分别涵盖20个月。我们显示,拟议的模型符合所考虑的餐厅数据的特点。此外,我们比较了我们方法的预测性能与其他完善的预测方法的绩效。