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Model selection and averaging in the assessment of the drivers of household food waste to reduce the probability of false positives

机译:在选择家庭食物垃圾的驱动因素时进行模型选择和平均,以减少误报的可能性

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摘要

Food waste from households contributes the greatest proportion to total food waste in developed countries. Therefore, food waste reduction requires an understanding of the socio-economic (contextual and behavioural) factors that lead to its generation within the household. Addressing such a complex subject calls for sound methodological approaches that until now have been conditioned by the large number of factors involved in waste generation, by the lack of a recognised definition, and by limited available data. This work contributes to food waste generation literature by using one of the largest available datasets that includes data on the objective amount of avoidable household food waste, along with information on a series of socio-economic factors. In order to address one aspect of the complexity of the problem, machine learning algorithms (random forests and boruta) for variable selection integrated with linear modelling, model selection and averaging are implemented. Model selection addresses model structural uncertainty, which is not routinely considered in assessments of food waste in literature. The main drivers of food waste in the home selected in the most parsimonious models include household size, the presence of fussy eaters, employment status, home ownership status, and the local authority. Results, regardless of which variable set the models are run on, point toward large households as being a key target element for food waste reduction interventions.
机译:在发达国家,家庭食物垃圾占总食物垃圾的比例最大。因此,减少食物浪费需要了解导致其在家庭中产生的社会经济(背景和行为)因素。解决这样一个复杂的主题需要采用合理的方法论方法,直到现在,这些方法都受到废物产生中涉及的众多因素,缺乏公认的定义以及有限的可用数据的限制。通过使用最大的可用数据集之一,这项工作为食物垃圾的产生做出了贡献,该数据集包括有关可避免的家庭食物垃圾的客观量的数据以及一系列社会经济因素的信息。为了解决问题的复杂性的一个方面,实现了将变量选择与线性建模,模型选择和平均相集成的机器学习算法(随机森林和boruta)。模型的选择解决了模型结构的不确定性,在文献中对食物浪费的评估中通常不会考虑这种不确定性。在最简约的模型中,家庭中食物浪费的主要驱动因素包括家庭人数,挑食者的存在,就业状况,房屋所有权状况和地方政府。无论使用哪种变量设置模型,结果都表明,大型家庭是减少食物浪费干预措施的关键目标要素。

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