利用食品共享应用程序的用户数据来证明 "要么加热,要么吃饭 "的两难选择

T. Semple, John Harvey, Lucelia Rodrigues, M. Gillott, Grazziela Figueredo, Georgiana Nica-Avram
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引用次数: 0

摘要

导言与背景以往的文献发现,经济上处于弱势的家庭往往会在必需品(尤其是能源和食品)之间做出非自愿的支出权衡。这种影响在冬季尤为明显,因为冬季家庭需要消耗更多的能源来维持适当的温度。尽管口语和新闻报道中经常提到 "要么取暖,要么吃饭的两难境地",但最近在英国有关这一现象的经验证据仍然有限。考虑到近期的经济困难和不断上涨的能源成本,这是一个相当大的知识空白。目标与方法 本研究使用 2022 年冬季在英国伦敦收集的调查数据(n=2877),分析受访者的社会人口和行为特征对自我报告的 "热或吃 "权衡的影响。调查是通过食物共享应用 OLIO 的用户进行的,并实施了配额限制,以确保样本的社会经济代表性(基于多重贫困指数)。相关调查问题(即因变量)为""在过去一年中,您的家庭为了支付能源账单而减少或放弃家庭基本必需品(如药品或食品)开支的频率如何?鉴于因变量的性质,随机参数有序 Probit(RPOP)模型被认为是合适的,该模型是一种用于离散、有序结果的统计建模框架。RPOP 方法允许探讨各种自变量的影响,在本案例中,这些自变量是受访者的社会人口和行为特征。与 "数字足迹 "的相关性与 "数字足迹 "主题的相关性体现在本研究的目的上:通过分析从移动应用程序用户那里获取的社会人口和行为数据,深入了解社会问题。结果初步结果显示,相当大比例的样本(约 37%)在一年中至少有一个月做出了 "吃或热 "的权衡。有趣的是,这一比例比伦敦官方公布的燃料贫困率(11.9%)高出数倍,这表明政府的燃料贫困指标未能反映出许多显示出能源负担不起迹象的家庭。RPOP 模型的估算结果表明,一系列社会人口变量(包括家庭组成和残疾特征),以及受访者使用 OLIO 应用程序时的一些行为特征(包括使用应用程序的频率和食物请求),都对取暖或就餐权衡的可能性产生了显著影响。结论与启示我们的研究结果可用于指导粮食和燃料贫困的补救政策。鉴于英国的燃料贫困衡量标准将重点放在家庭的能源效率而不是居住者的特征上,因此关注导致 "热或吃 "权衡的社会人口变量可能特别有用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Utilising User Data from a Food-Sharing App to Evidence the "Heat-or-Eat" Dilemma
Introduction & BackgroundPrevious literature has found that financially vulnerable households often make involuntary spending trade-offs between necessities, particularly energy and food. This effect is especially pronounced during winter, when homes require greater energy expenditure to maintain an adequate temperature. Despite frequent colloquial and journalistic references to the "heat-or-eat dilemma”, there remains limited recent empirical evidence of this phenomenon in the UK. This is a considerable knowledge gap, given recent economic hardship and rising energy costs. Objectives & ApproachThis study uses survey data (n=2877), collected during winter 2022 in London, UK, to analyse the sociodemographic and behavioural characteristics of respondents affecting self-reported heat-or-eat trade-offs. The survey was deployed via users of the food-sharing app, OLIO, and quota restraints were enforced to ensure the socioeconomic representativeness of the sample (based on Index of Multiple Deprivation). The survey question of interest (i.e., the dependent variable) was ""in the past year, how frequently did your household reduce or forego expenses for basic household necessities, such as medicine or food, in order to pay an energy bill?"" and responses were recorded using a discrete, ordinal scale: never; 1-2 months; some months but not every month; almost every month. Given the nature of the dependent variable, the Random Parameters Ordered Probit (RPOP) model, a statistical modelling framework used in the case of discrete, ordered outcomes, was considered suitable. The RPOP approach allows the effect of various independent variables to be explored, which in this case, are sociodemographic and behavioural characteristics of respondents. Relevance to Digital FootprintsThe relevance to the digital footprints theme is embedded in the study’s aim: to draw insights into social issues through the analysis of sociodemographic and behavioural data retrieved from the users of a mobile app. ResultsInitial results show that a considerable proportion (~37%) of the sample made heat-or-eat trade-offs at least one month of the year. Interestingly, this is several times higher than the official rate of fuel poverty in London (11.9%), suggesting that the government’s fuel poverty metric fails to capture many homes that display signs of energy unaffordability. The RPOP model estimation results show that a broad range of sociodemographic variables (including features of household composition and disability), as well as several behavioural features derived from the respondents’ use of the OLIO app, including the frequency of app usage and food requests, significantly affected the likelihood of heat-or-eat trade-offs. Conclusions & ImplicationsOur results can be used to guide remedial food and fuel poverty policies. It may be particularly useful to focus on the sociodemographic variables that lead to heat-or-eat trade-offs, given that the English fuel poverty metric places arguably unjust focus on a home’s energy efficiency, rather than occupant characteristics.
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