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利用食品杂货购物数据得出的贫困快速指标。

Rapid indicators of deprivation using grocery shopping data.

作者信息

Bannister Adam, Botta Federico

机构信息

Department of Computer Science, University of Exeter, Exeter, UK.

The Alan Turing Institute, British Library, London, UK.

出版信息

R Soc Open Sci. 2021 Dec 22;8(12):211069. doi: 10.1098/rsos.211069. eCollection 2021 Dec.

Abstract

Measuring socio-economic indicators is a crucial task for policy makers who need to develop and implement policies aimed at reducing inequalities and improving the quality of life. However, traditionally this is a time-consuming and expensive task, which therefore cannot be carried out with high temporal frequency. Here, we investigate whether secondary data generated from our grocery shopping habits can be used to generate rapid estimates of deprivation in the city of London in the UK. We show the existence of a relationship between our grocery shopping data and the deprivation of different areas in London, and how we can use grocery shopping data to generate quick estimates of deprivation, albeit with some limitations. Crucially, our estimates can be generated very rapidly with the data used in our analysis, thus opening up the opportunity of having early access to estimates of deprivation. Our findings provide further evidence that new data streams contain accurate information about our collective behaviour and the current state of our society.

摘要

衡量社会经济指标对于需要制定和实施旨在减少不平等现象并提高生活质量政策的政策制定者而言是一项至关重要的任务。然而,传统上这是一项耗时且昂贵的任务,因此无法以高时间频率进行。在此,我们研究从我们的购物习惯中生成的二手数据是否可用于快速估算英国伦敦市的贫困状况。我们展示了我们的购物数据与伦敦不同地区贫困状况之间的关系,以及我们如何利用购物数据来快速估算贫困状况,尽管存在一些局限性。至关重要的是,利用我们分析中使用的数据可以非常迅速地生成估算结果,从而为尽早获取贫困状况估算结果提供了机会。我们的研究结果进一步证明,新的数据流包含有关我们集体行为和社会现状的准确信息。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/59df/8692957/4c98cef54583/rsos211069f01.jpg

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