Customer trends in take-away purchasing: Geospatial patterns of online food delivery platform usage in UK output areas

Tamara Garcia del Toro, Francesca Pontin, Rachel Oldroyd, Stephen Clark, Nik Lomax
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 The food environment has been transformed in the past decade, with the development of new services such as online grocery and take away delivery services. Alongside a shift towards more out-of-home-food consumption and the unique current historical context (COVID-19 pandemic and the cost-of-living crisis).
 Previous work carried out by Keeble et al (2021) has looked at association between area outlet availability, online delivery platform usage and area deprivation, showing a positive association between number of food outlets available only, online delivery service usage, and area deprivation using scraped and self-reported data. However, no work to date has been able to look at transaction record to validate these results and better understand the demographic characteristics of ordering populations.
 Objectives & ApproachTo better understand consumer habits around takeaway purchasing, and how the growth of online food delivery services has shaped new behaviours, we have partnered with a large online takeaway delivery platform to use their transaction data in order to shed light on how changing customer habits are shaping the food environment.
 Over 5 million rows of transaction data for online food purchasing were provided by the data partner, a large online food delivery service. The data included anonymised customer reference id, location and order information, as well as food outlet details. Data were accessed through the retailer’s own secure platforms. Data analysis was carried out in two phases: an exploration of the locational characteristics of these classifications and distribution across UK geography, and exploration of fitted linear regression models to explain median basket price per output area.
 Geodemographic data was sourced from the 2011 and 2021 census at the Output Area Level (approximately 125 households) and retailer data were matched using postcode information.
 Model performance was estimated using the adjusted R2 coefficient and p-value for statistical significance, and further diagnostics tests included different residuals plots.
 Relevance to Digital FootprintsSelf-reported nutrition data has been notoriously difficult to work with due to unreliability of memory and stigma.
 Understanding people's eating habits is important if we are to understand how nutrition impacts health outcomes, how people interact with the food environment, which interventions are working, and to identify vulnerable populations.
 Much research using digital footprints data to carry out nutrition research has focused around supermarket transaction data, which is limited as it does not clarify how the food is consumed if at all.
 The current rise of the online food delivery market is helping create a shape the digital food environment, which is affecting and displacing the physical food environment. The data generated by users of online food delivery platforms is allowing us to closely understand how people are interacting with the food systems by adding a higher level of detail than self-reported data could.
 ResultsWe found that OAs with higher percentages of affluent homes had lower order frequency, with car ownership playing the biggest role.
 We carried out a geospatial analysis of basket price, order frequency and percentage of deprived homes in Leeds and found that higher percentage of deprived homes mapped well over areas with high order frequency and low basket price.
 Conclusions & ImplicationsWe found that demographic markers of affluence were highly associated with a higher median basket price and lower order frequency, and these were significantly able to predict median basket price per OA using fitted linear regression models.
 The best predictors of median basket spend were car ownership and output area classification supergroup. We believe there to be a complex interplay of deprivation and access factors which are best captured by these measures.
 We found that more deprived population have a higher number of orders with lower basket prices. We have seen that higher order frequency is associated with a higher number of orders to restaurants which cuisine type is defined as burgers. Cuisine type preferences might be able to explain median basket price difference between affluent and deprived populations. Further work should look to see whether availability of different cuisine types differs by area to understand how access is driving cuisine preference.","PeriodicalId":132937,"journal":{"name":"International Journal for Population Data Science","volume":"27 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2023-09-18","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"International Journal for Population Data Science","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.23889/ijpds.v8i3.2275","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
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Abstract

Introduction & BackgroundCurrent research in people’s diet habits has been very focused in the food environment: the different contexts in which people engage with the food system. Originally, this concept referred to the physical presence of food in a person’s surroundings, which affects their ability to access different foods. The food environment has been transformed in the past decade, with the development of new services such as online grocery and take away delivery services. Alongside a shift towards more out-of-home-food consumption and the unique current historical context (COVID-19 pandemic and the cost-of-living crisis). Previous work carried out by Keeble et al (2021) has looked at association between area outlet availability, online delivery platform usage and area deprivation, showing a positive association between number of food outlets available only, online delivery service usage, and area deprivation using scraped and self-reported data. However, no work to date has been able to look at transaction record to validate these results and better understand the demographic characteristics of ordering populations. Objectives & ApproachTo better understand consumer habits around takeaway purchasing, and how the growth of online food delivery services has shaped new behaviours, we have partnered with a large online takeaway delivery platform to use their transaction data in order to shed light on how changing customer habits are shaping the food environment. Over 5 million rows of transaction data for online food purchasing were provided by the data partner, a large online food delivery service. The data included anonymised customer reference id, location and order information, as well as food outlet details. Data were accessed through the retailer’s own secure platforms. Data analysis was carried out in two phases: an exploration of the locational characteristics of these classifications and distribution across UK geography, and exploration of fitted linear regression models to explain median basket price per output area. Geodemographic data was sourced from the 2011 and 2021 census at the Output Area Level (approximately 125 households) and retailer data were matched using postcode information. Model performance was estimated using the adjusted R2 coefficient and p-value for statistical significance, and further diagnostics tests included different residuals plots. Relevance to Digital FootprintsSelf-reported nutrition data has been notoriously difficult to work with due to unreliability of memory and stigma. Understanding people's eating habits is important if we are to understand how nutrition impacts health outcomes, how people interact with the food environment, which interventions are working, and to identify vulnerable populations. Much research using digital footprints data to carry out nutrition research has focused around supermarket transaction data, which is limited as it does not clarify how the food is consumed if at all. The current rise of the online food delivery market is helping create a shape the digital food environment, which is affecting and displacing the physical food environment. The data generated by users of online food delivery platforms is allowing us to closely understand how people are interacting with the food systems by adding a higher level of detail than self-reported data could. ResultsWe found that OAs with higher percentages of affluent homes had lower order frequency, with car ownership playing the biggest role. We carried out a geospatial analysis of basket price, order frequency and percentage of deprived homes in Leeds and found that higher percentage of deprived homes mapped well over areas with high order frequency and low basket price. Conclusions & ImplicationsWe found that demographic markers of affluence were highly associated with a higher median basket price and lower order frequency, and these were significantly able to predict median basket price per OA using fitted linear regression models. The best predictors of median basket spend were car ownership and output area classification supergroup. We believe there to be a complex interplay of deprivation and access factors which are best captured by these measures. We found that more deprived population have a higher number of orders with lower basket prices. We have seen that higher order frequency is associated with a higher number of orders to restaurants which cuisine type is defined as burgers. Cuisine type preferences might be able to explain median basket price difference between affluent and deprived populations. Further work should look to see whether availability of different cuisine types differs by area to understand how access is driving cuisine preference.
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外卖购买的客户趋势:英国产出地区在线食品配送平台使用的地理空间模式
介绍,目前对人们饮食习惯的研究主要集中在食物环境上:人们参与食物系统的不同背景。最初,这个概念指的是食物在一个人周围的物理存在,这会影响他们获取不同食物的能力。在过去的十年里,随着在线杂货和外卖服务等新服务的发展,食品环境发生了变化。除了转向更多的家庭外食品消费和当前独特的历史背景(COVID-19大流行和生活成本危机)。Keeble等人(2021)之前的工作研究了区域网点可用性、在线配送平台使用和区域剥夺之间的关系,显示了仅可用的食品网点数量、在线配送服务使用和区域剥夺之间的正相关关系,使用了收集和自我报告的数据。然而,到目前为止,还没有工作能够查看交易记录来验证这些结果,并更好地了解订购人群的人口统计学特征。 目标,方法:为了更好地了解消费者在外卖购买方面的习惯,以及在线外卖服务的增长如何塑造了新的行为,我们与一家大型在线外卖平台合作,利用他们的交易数据来揭示消费者习惯的变化是如何塑造食品环境的。 数据合作伙伴提供了超过500万行在线食品购买交易数据,这是一家大型在线食品配送服务。这些数据包括匿名的客户参考id、位置和订单信息,以及餐厅的详细信息。数据是通过零售商自己的安全平台访问的。数据分析分两个阶段进行:探索这些分类的区位特征和在英国地理上的分布,以及探索拟合的线性回归模型来解释每个产出区域的篮子价格中位数。 地理人口统计数据来自2011年和2021年产出区一级(约125户)的人口普查,零售商数据使用邮政编码信息进行匹配。采用调整后的R2系数和p值来估计模型的性能,进一步的诊断检验包括不同的残差图。 与数字足迹的相关性由于记忆和耻辱的不可靠性,自我报告的营养数据一直是出了名的难以处理。 如果我们要了解营养如何影响健康结果,人们如何与食物环境相互作用,哪些干预措施正在起作用,并确定弱势群体,了解人们的饮食习惯是很重要的。许多使用数字足迹数据进行营养研究的研究都集中在超市交易数据上,这是有限的,因为它没有阐明食物是如何被消费的,如果有的话。目前在线外卖市场的兴起正在帮助塑造数字食品环境,这正在影响和取代实体食品环境。在线送餐平台的用户生成的数据使我们能够通过添加比自我报告数据更高层次的细节来密切了解人们如何与食品系统互动。 结果我们发现,富裕家庭比例较高的oa订单频率较低,其中汽车拥有量发挥了最大的作用。 我们对利兹的篮子价格、订单频率和贫困住房比例进行了地理空间分析,发现在订单频率高、篮子价格低的地区,贫困住房比例较高。 结论,我们发现,富裕的人口统计学标志与较高的篮子价格中位数和较低的阶次频率高度相关,并且这些能够使用拟合的线性回归模型显著预测每OA的篮子价格中位数。 篮子消费中值的最佳预测指标是汽车拥有量和产出区域分类超组。我们认为,剥夺和获取因素之间存在复杂的相互作用,这些措施最好地捕捉了这些因素。我们发现,贫困人口越多,篮子价格越低的订单数量越多。我们已经看到,更高的订单频率与定义为汉堡的餐厅的订单数量相关。烹饪类型偏好可能能够解释富裕人群和贫困人群之间的篮子价格中位数差异。进一步的工作应该看看不同地区的不同烹饪类型的可用性是否不同,以了解获取如何驱动烹饪偏好。
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