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首页> 外文期刊>Socio-economic planning sciences >Application of Analytical Hierarchy Process (AHP) algorithm to income insecurity susceptibility mapping - A study in the district of Purulia, India
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Application of Analytical Hierarchy Process (AHP) algorithm to income insecurity susceptibility mapping - A study in the district of Purulia, India

机译:层次分析算法(AHP)在收入不安全敏感性测绘中的应用-印度Purulia区的一项研究

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摘要

Multi-criteria based prediction models are gradually finding places in the social and economic sciences to assess, locate, and address the complicated socio-economic issues arising around the globe. The incidence of any such issues may be treated as an output of complex interactions between a range of variables linked with ambient physical, socio-cultural, economic as well as the political system. The income insecurity is associated with the malnutrition, economic inequality, poverty, and several other socioeconomic hazards. At present, several studies are aiming to develop the ‘tools and techniques’ of demarcating the areas with some degree of vulnerability to a particular socioeconomic hazard and to examine the internal functions of the interactive variables linked with the hazard. In the present study, we tried to apply the algorithm of Analytical Hierarchy Process (AHP) in demarcating the areas susceptible to income insecurity in the district of Purulia, which is a backward district in the state of West Bengal, India, in terms of the overall level of human development achieved so far. The training dataset for developing the AHP model is based on the available secondary data. The model has been validated by running the modeled algorithm on a test dataset and applying the correlation and test of significance between the model output and the collected primary field data. The present model uses fifteen variables and is applicable to most of the subsistence agro-economic systems in tropical areas. The modification of the range of the variables and addition or alteration of variables within the similar structural framework will allow the model getting befitted with the other social and economic systems.
机译:基于多标准的预测模型正在逐步找到社会经济科学领域的位置,以评估,定位和解决全球范围内出现的复杂的社会经济问题。任何此类问题的发生都可以被视为一系列变量之间的复杂相互作用的结果,这些变量与周围的自然,社会文化,经济以及政治体系相关联。收入不安全与营养不良,经济不平等,贫困以及其他一些社会经济危害有关。目前,有几项研究旨在开发“工具和技术”,以划定在某种程度上易受特定社会经济危害影响的区域,并研究与危害相关的互动变量的内部功能。在本研究中,我们尝试将分析层次过程(AHP)算法应用到印度西部西孟加拉邦的落后地区普鲁里亚(Purulia)易受收入不安全影响的地区的划分中。迄今为止,人类发展的总体水平。用于开发AHP模型的训练数据集基于可用的辅助数据。通过在测试数据集上运行建模算法并在模型输出与收集的主字段数据之间应用相关性和显着性检验,来验证模型。本模型使用了十五个变量,适用于热带地区大多数自给自足的农业经济系统。在类似的结构框架内修改变量的范围以及添加或更改变量将使该模型与其他社会和经济系统相适应。

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