数据和机器学习能否改变基本收入模式的未来?贝叶斯信念网络方法

Data Pub Date : 2024-01-23 DOI:10.3390/data9020018
Hamed Khalili
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引用次数: 0

摘要

呼吁政府实施基本收入的呼声与时俱进。基本收入概念的理论背景只规定向个人转移同等数额的收入,而不考虑其具体属性。然而,世界各地最近提出的基本收入倡议都附加了有关家庭属性的某些规则。这种做法在适当承认弱势群体方面面临重大挑战。在制定有关家庭福利属性的规则时,一种可能的替代方法是采用人工智能算法,这种算法可以处理前所未有的大量数据。整合机器学习能否通过预测未来易陷入贫困的家庭来改变基本收入的未来?在本文中,我们利用由 150 万个人数据组成的多维度纵向福利数据和贝叶斯信念网络方法,研究了基于现有家庭福利属性预测家庭未来贫困脆弱性的可行性。
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Can Data and Machine Learning Change the Future of Basic Income Models? A Bayesian Belief Networks Approach
Appeals to governments for implementing basic income are contemporary. The theoretical backgrounds of the basic income notion only prescribe transferring equal amounts to individuals irrespective of their specific attributes. However, the most recent basic income initiatives all around the world are attached to certain rules with regard to the attributes of the households. This approach is facing significant challenges to appropriately recognize vulnerable groups. A possible alternative for setting rules with regard to the welfare attributes of the households is to employ artificial intelligence algorithms that can process unprecedented amounts of data. Can integrating machine learning change the future of basic income by predicting households vulnerable to future poverty? In this paper, we utilize multidimensional and longitudinal welfare data comprising one and a half million individuals’ data and a Bayesian beliefs network approach to examine the feasibility of predicting households’ vulnerability to future poverty based on the existing households’ welfare attributes.
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