基于配料的校园食堂厨房销售菜份预测

Lucas Woltmann, Jonathan Drechsel, Claudio Hartmann, Wolfgang Lehner
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引用次数: 2

摘要

在餐饮业,一个主要的挑战是对菜肴分量的未知短期需求。顾客想要避免排队,并根据自己的喜好来选择自己喜欢的菜。满足这些需求对汽车行业来说很重要,但预测未来的销量是一项具有挑战性的任务。通常,预测是手工得出的,自动化方法很少在实践中应用。本文提出了一种基于机器学习的预测模型,使用一组派生特征来预测每天的菜肴份量和绝对数量。特别是,这些特性包括基于文本的成分提取、用于建模时间依赖性的日历效果,以及用于建模客户偏好的喜爱特性。正如详细的真实世界评估所示,我们的方法在预测菜肴时实现了15%的相对模型误差。此外,我们讨论了有益特征的影响,并评估了它们对整体预测质量的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ingredient-based Forecast of Sold Dish Portions in Campus Canteen Kitchens
In the catering industry, one major challenge is the unknown short-term demand for dish portions. Customers want to avoid queuing and desire their favorite dish according to their preferences. Meeting these demands is important for the industry but predicting future sales is a challenging task. Often, the predictions are derived manually and automated approaches are rarely applied in practice. This paper presents an ML-based forecast model using a set of derived features to predict shares and absolute numbers of dish portions per day. In particular, these features include text-based extractions of ingredients, calendar effects to model time dependencies, and favorite features to model customers' preferences. As the detailed real world evaluation shows, our approach achieves a relative model error of 15% for the prediction of dishes. Furthermore, we discuss the influence of beneficial features and assess their influence on the overall prediction quality.
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