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Characteristics of 'Escaping' and 'Falling into' Poverty in India: An Analysis of IHDS Panel Data using machine learning approach

机译:“逃脱”的特点和“陷入”印度贫困“:使用机器学习方法分析IHDS面板数据

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Though research on poverty is numerous, it is in recent times that data scientists have taken interest in understanding the phenomena using various non-conventional methods. The absence of large-scale data on same households at different points of time, has deprived researchers of the deeper analysis of household dynamics in general and poverty in specific. IHDS database provided a unique opportunity to fill this gap. One of the earlier studies using the same database, while analyzing the characteristics impacting escaping and falling into poverty considers the same set of attributes which explain both the phenomena. This work makes following contributions: 1. It has been assumed that different attributes explain escaping and falling into poverty. 2. It uses a machine learning approach that identifies the respective strength of each explaining attribute more accurately. 3. The method classifies escaping and falling into three and two groups respectively, that suggests the vulnerability within the groups and 4. Similarities and differences in results from the previous study reinforce the existing established characteristics as well as provides new nuances to ponder about. Overall, this research is a definitive contribution on method, analysis and findings.
机译:虽然对贫困的研究很多,但近来,数据科学家们对使用各种非传统方法理解现象感兴趣。在不同时间点缺乏同家庭的大规模数据,已经剥夺了研究人员,对家庭动态的更深入分析,以及特定的贫困。 IHDS数据库提供了填补此差距的独特机会。使用同一数据库的早期研究之一,同时分析影响逃逸并落入贫困的特征,考虑了同一组的属性,该属性解释了这种现象。这项工作提出了以下贡献:1。假设不同的属性解释逃脱并陷入贫困。 2.它使用了一种机器学习方法,其更准确地识别各解释属性的各个强度。 3.该方法分类分别逃离并分为三个和两组,这表明群体内的脆弱性和4.前一项研究结果的相似之处和差异加强了现有的成熟特征,并提供了对思考的新细微差别。总体而言,该研究是对方法,分析和调查结果的最终贡献。

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