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Predicting regional economic indices using big data of individual bank card transactions

机译:使用单个银行卡交易的大数据预测区域经济指数

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For centuries quality of life was a subject of studies across different disciplines. However, only with the emergence of a digital era, it became possible to investigate this topic on a larger scale. Over time it became clear that quality of life not only depends on one, but on three relatively different parameters: social, economic and well-being measures. In this study we focus only on the first two, since the last one is often very subjective and consequently hard to measure. Using a complete set of bank card transactions recorded by Banco Bilbao Vizcaya Argentaria (BBVA) during 2011 in Spain, we first create a feature space by defining various meaningful characteristics of a particular area performance through activity of its businesses, residents and visitors. We then evaluate those quantities by considering available official statistics for Spanish provinces (e.g., housing prices, unemployment rate, life expectancy) and investigate whether they can be predicted based on our feature space. For the purpose of prediction, our study proposes a supervised machine learning approach. Our finding is that there is a clear correlation between individual spending behavior and official socioeconomic indexes denoting quality of life. Moreover, we believe that this modus operandi is useful to understand, predict and analyze the impact of human activity on the wellness of our society on scales for which there is no consistent official statistics available (e.g., cities and towns, districts or smaller neighborhoods).
机译:几个世纪以来,生活质量一直是跨不同学科的研究主题。但是,只有随着数字时代的出现,才有可能对这一主题进行更大规模的研究。随着时间的流逝,人们的生活质量变得不仅取决于一个,而且取决于三个相对不同的参数:社会,经济和福祉措施。在本研究中,我们仅关注前两个,因为最后一个通常是非常主观的,因此很难衡量。我们使用西班牙银行(Banco Bilbao Vizcaya Argentaria)(BBVA)在2011年期间在西班牙记录的一整套银行卡交易记录,首先通过定义特定区域业绩的各种有意义的特征,通过其业务,居民和访客的活动来创建特征空间。然后,我们通过考虑西班牙各省的可用官方统计数据(例如,房价,失业率,预期寿命)评估这些数量,并调查是否可以根据我们的特征空间进行预测。为了进行预测,我们的研究提出了一种有监督的机器学习方法。我们的发现是,个人消费行为与表示生活质量的官方社会经济指标之间存在明显的相关性。此外,我们认为,这种作案手法对于了解,预测和分析人类活动对我们社会健康的影响(在没有统一的官方统计数据的规模上,例如城市和城镇,地区或较小的社区)很有帮助。 。

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