Evaluating Performance of Restaurant POS Processes in Fast-Food Restaurants

Hüseyin Şahan, Sultan Ceren Öner, Ahmet Tugrul Bayrak, İlker Baştürk, Olcay Taner Yıldız
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Abstract

There are billions of operations happening in a wide range of sectors on a daily basis. When it comes to the hospitality sector, it appears essential to handle POS operations in a more efficient way in restaurants. To fill the gap in the studies about event log data in the fast food restaurant POS context, an approach needs to be developed. Regarding these, in this study, restaurant event log data for taking orders are comprehensively analyzed using process mining principles and machine learning applications to increase productivity. After the discovery of processes, the bottlenecks of the existing system were extracted in fast food restaurant point of sale (POS). The main focus was determined as order-taking process times, which can be the most troubled part of the fast food delivery process. Regression analysis was conducted to identify possible reasons for increasing time for order taking in a restaurant pos. This analysis can extract the main drawbacks of the system and provide insights to solve problematic points in order to increase productivity. Process discovery techniques, such as heuristics miner, directly follows graph (DFG) are used under process mining methodologies to discover event logs in a visual manner in the background. To be able to understand the logic of event logs deeply, exploratory data analysis techniques were performed to identify the effect of log activity types by also focusing on their respective attributes. Afterwards, it needed to adopt performance analysis, comparative, and action-oriented process mining techniques to evaluate, identify, and operationally support the business. In addition to process mining approaches, feature engineering, descriptive statistics techniques and outlier elimination are used along with various regression methods such as XgBoost, Random Forest to identify the relationship between variables of the system. The detailed descriptions of the feature relations are also explained to understand how variables affect the order taking time directly or indirectly. After that, the study found possible reasons, such as how many products are sold or how many different operators are working on that POS, affecting ordering time and how much they are specific to its context. By identifying these reasons, it is shown that order-taking processing times in a restaurant POS can be dramatically decreased with specific recommended actions in particular contexts. By applying research findings, order-taking process times are expected to improve by around 21% in a territorial business, which implies productivity growth in POS environments. Consequently, the study first showed how different techniques can be used to identify outliers in relationship metrics in restaurant POS event log data. Secondly, it is a direct, crucial example of what factors affect a restaurant's POS processes and how much. Meanwhile, it significantly suggests machine learning integrated process mining approaches by combining the mentioned techniques. Lastly, the paper can reveal how efficient this process structure is for operator usage, which is a question of further study.
快餐店POS流程绩效评估
每天在各行各业都有数十亿的业务在进行。在酒店业,以更有效的方式处理餐厅的POS操作似乎至关重要。为了填补快餐店POS环境下事件日志数据研究的空白,需要开发一种方法。关于这些,在本研究中,使用流程挖掘原理和机器学习应用程序全面分析了餐厅接受订单的事件日志数据,以提高生产力。在发现流程后,提取现有系统在快餐店销售点中的瓶颈。主要的焦点被确定为接受订单的过程时间,这可能是快餐配送过程中最麻烦的部分。进行了回归分析,以确定增加餐厅点单时间的可能原因。这种分析可以提取系统的主要缺点,并提供解决问题点的见解,以提高生产力。在流程挖掘方法下,使用启发式挖掘器、直接跟随图(DFG)等流程发现技术在后台以可视化的方式发现事件日志。为了能够深入理解事件日志的逻辑,执行了探索性数据分析技术,通过关注日志活动类型各自的属性来识别其影响。之后,它需要采用性能分析、比较和面向操作的流程挖掘技术来评估、识别和操作性地支持业务。除了过程挖掘方法外,还使用特征工程、描述性统计技术和离群值消除以及各种回归方法(如XgBoost、Random Forest)来识别系统变量之间的关系。对特征关系的详细描述也进行了解释,以了解变量是如何直接或间接地影响花费时间的顺序。在那之后,研究发现了可能的原因,比如销售了多少产品,或者有多少不同的操作员在POS上工作,影响订购时间,以及它们在多大程度上是特定于上下文的。通过识别这些原因,我们可以看到,在特定的上下文中,使用特定的推荐操作可以显著减少餐厅POS中的订单处理时间。通过应用研究结果,在区域业务中,订单处理时间预计将提高约21%,这意味着POS环境中的生产率提高。因此,该研究首先展示了如何使用不同的技术来识别餐馆POS事件日志数据中关系指标的异常值。其次,这是一个直接的、关键的例子,说明了哪些因素影响了一家餐厅的POS流程,影响程度有多大。同时,通过结合上述技术,它显著地提出了机器学习集成过程挖掘方法。最后,本文揭示了这种工艺结构对操作者的使用效率,这是一个有待进一步研究的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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