{"title":"衡量人类发展水平的五维不等加权绘图法:在尼泊尔巴格马蒂省的应用","authors":"Ishwari Prasad Banjade, Srijan Lal Shrestha","doi":"10.1007/s41685-024-00359-1","DOIUrl":null,"url":null,"abstract":"<div><p>Human development index (HDI) was estimated based on an alternative and modified methodology. We considered five components to be relatively more rational and representative of the HDI: <i>income</i>, <i>education</i>, <i>health</i>, <i>social governance,</i> and <i>technological adaptation.</i> Reviews suggested for the formulation of hypotheses that the present HDI fails to address many factors included in SDGs and hence is insufficient in its representativeness. In addition, the components need not necessarily be equally weighted. The validity of HDI was improved by inclusion of social governance and technological adaptation. The method of mapping between SDGs and HDI components was used along with the Laplace rule of probability to determine the component weights, and HDI was estimated by weighted geometric mean. The modified methodology was applied by conducting a sample household survey in Bagmati Province, Nepal, in 2023, based on three-stage stratified random sampling that covered mountain to Terai regions of the province including 17 rural and urban municipalities with a sample size of 569 households. The estimated weights of the components differed notably (0.16–0.26), which implied varied levels of importance and could be crucial in development planning. Survey results quantified sub-indices of HDI as income = 0.341 (95% CI 0.337, 0.345), education = 0.650 (95% CI 0.645, 0.655), health = 0.807 (95% CI 0.806, 0.807), social governance = 0.678 (95% CI 0.674, 0.681), and technological adaptation = 0.462 (95% CI 0.454, 0.469). These figures suggest a high priority for economic progress and technological support for the people of Bagmati Province. Finally, the estimated HDI of the province was found to be 0.559 (95% CI 0.555, 0.564), which is substantially lower than the current UNDP-estimated HDI value (0.661) and warrants more focused development policies than those based on the UNDP HDI value. Moreover, the inequality adjusted HDI was found to be substantially lower by 13.4% compared to HDI and demonstrates the existence of considerable inequalities in the province. Overall, the comprehensively modified HDI is useful to enhance policy implications, particularly in developing countries like Nepal and results suggested that Bagmati Province would suffer from inappropriate development policies due to overestimated UNDP-adopted HDI.</p></div>","PeriodicalId":36164,"journal":{"name":"Asia-Pacific Journal of Regional Science","volume":"8 4","pages":"1135 - 1161"},"PeriodicalIF":1.9000,"publicationDate":"2024-11-17","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Five-dimensional unequally weighted mapping methodology for measuring the level of human development: an application in Bagmati Province, Nepal\",\"authors\":\"Ishwari Prasad Banjade, Srijan Lal Shrestha\",\"doi\":\"10.1007/s41685-024-00359-1\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<div><p>Human development index (HDI) was estimated based on an alternative and modified methodology. We considered five components to be relatively more rational and representative of the HDI: <i>income</i>, <i>education</i>, <i>health</i>, <i>social governance,</i> and <i>technological adaptation.</i> Reviews suggested for the formulation of hypotheses that the present HDI fails to address many factors included in SDGs and hence is insufficient in its representativeness. In addition, the components need not necessarily be equally weighted. The validity of HDI was improved by inclusion of social governance and technological adaptation. The method of mapping between SDGs and HDI components was used along with the Laplace rule of probability to determine the component weights, and HDI was estimated by weighted geometric mean. The modified methodology was applied by conducting a sample household survey in Bagmati Province, Nepal, in 2023, based on three-stage stratified random sampling that covered mountain to Terai regions of the province including 17 rural and urban municipalities with a sample size of 569 households. The estimated weights of the components differed notably (0.16–0.26), which implied varied levels of importance and could be crucial in development planning. Survey results quantified sub-indices of HDI as income = 0.341 (95% CI 0.337, 0.345), education = 0.650 (95% CI 0.645, 0.655), health = 0.807 (95% CI 0.806, 0.807), social governance = 0.678 (95% CI 0.674, 0.681), and technological adaptation = 0.462 (95% CI 0.454, 0.469). These figures suggest a high priority for economic progress and technological support for the people of Bagmati Province. Finally, the estimated HDI of the province was found to be 0.559 (95% CI 0.555, 0.564), which is substantially lower than the current UNDP-estimated HDI value (0.661) and warrants more focused development policies than those based on the UNDP HDI value. Moreover, the inequality adjusted HDI was found to be substantially lower by 13.4% compared to HDI and demonstrates the existence of considerable inequalities in the province. 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引用次数: 0
摘要
人类发展指数(HDI)是根据另一种经过修改的方法估算出来的。我们认为人类发展指数的五个组成部分:收入、教育、健康、社会治理和技术适应性相对更加合理和具有代表性。审查表明,在提出假设时,目前的人类发展指数未能涉及可持续发展目标中的许多因素,因此其代表性不足。此外,各组成部分的权重不一定相同。通过纳入社会治理和技术适应,人类发展指数的有效性得到了提高。采用可持续发展目标与人类发展指数各组成部分之间的映射方法以及拉普拉斯概率法则来确定各组成部分的权重,并通过加权几何平均数来估算人类发展指数。修改后的方法于 2023 年在尼泊尔巴格马蒂省进行了一次住户抽样调查,调查基于三个阶段的分层随机抽样,涵盖该省山区到特莱地区,包括 17 个农村和城市市镇,样本量为 569 户。各组成部分的估计权重差异显著(0.16-0.26),这意味着重要程度不同,在发展规划中可能至关重要。调查结果将人类发展指数的子指数量化为:收入 = 0.341(95% CI 0.337,0.345),教育 = 0.650(95% CI 0.645,0.655),健康 = 0.807(95% CI 0.806,0.807),社会治理 = 0.678(95% CI 0.674,0.681),技术适应 = 0.462(95% CI 0.454,0.469)。这些数字表明,巴格马蒂省人民高度重视经济进步和技术支持。最后,巴格马蒂省的人类发展指数估计值为 0.559(95% CI 0.555,0.564),大大低于联合国开发计划署目前估计的人类发展指数值(0.661),因此需要制定比根据联合国开发计划署人类发展指数值制定的政策更有针对性的发展政策。此外,不平等调整后的人类发展指数比人类发展指数低 13.4%,表明该省存在严重的不平等现象。总之,全面修订后的人类发展指数有助于加强政策影响,特别是在尼泊尔这样的发展中国家,结果表明,由于高估了联合国开发计划署采用的人类发展指数,巴格马蒂省将受到不适当的发展政策的影响。
Five-dimensional unequally weighted mapping methodology for measuring the level of human development: an application in Bagmati Province, Nepal
Human development index (HDI) was estimated based on an alternative and modified methodology. We considered five components to be relatively more rational and representative of the HDI: income, education, health, social governance, and technological adaptation. Reviews suggested for the formulation of hypotheses that the present HDI fails to address many factors included in SDGs and hence is insufficient in its representativeness. In addition, the components need not necessarily be equally weighted. The validity of HDI was improved by inclusion of social governance and technological adaptation. The method of mapping between SDGs and HDI components was used along with the Laplace rule of probability to determine the component weights, and HDI was estimated by weighted geometric mean. The modified methodology was applied by conducting a sample household survey in Bagmati Province, Nepal, in 2023, based on three-stage stratified random sampling that covered mountain to Terai regions of the province including 17 rural and urban municipalities with a sample size of 569 households. The estimated weights of the components differed notably (0.16–0.26), which implied varied levels of importance and could be crucial in development planning. Survey results quantified sub-indices of HDI as income = 0.341 (95% CI 0.337, 0.345), education = 0.650 (95% CI 0.645, 0.655), health = 0.807 (95% CI 0.806, 0.807), social governance = 0.678 (95% CI 0.674, 0.681), and technological adaptation = 0.462 (95% CI 0.454, 0.469). These figures suggest a high priority for economic progress and technological support for the people of Bagmati Province. Finally, the estimated HDI of the province was found to be 0.559 (95% CI 0.555, 0.564), which is substantially lower than the current UNDP-estimated HDI value (0.661) and warrants more focused development policies than those based on the UNDP HDI value. Moreover, the inequality adjusted HDI was found to be substantially lower by 13.4% compared to HDI and demonstrates the existence of considerable inequalities in the province. Overall, the comprehensively modified HDI is useful to enhance policy implications, particularly in developing countries like Nepal and results suggested that Bagmati Province would suffer from inappropriate development policies due to overestimated UNDP-adopted HDI.
期刊介绍:
The Asia-Pacific Journal of Regional Science expands the frontiers of regional science through the diffusion of intrinsically developed and advanced modern, regional science methodologies throughout the Asia-Pacific region. Articles published in the journal foster progress and development of regional science through the promotion of comprehensive and interdisciplinary academic studies in relationship to research in regional science across the globe. The journal’s scope includes articles dedicated to theoretical economics, positive economics including econometrics and statistical analysis and input–output analysis, CGE, Simulation, applied economics including international economics, regional economics, industrial organization, analysis of governance and institutional issues, law and economics, migration and labor markets, spatial economics, land economics, urban economics, agricultural economics, environmental economics, behavioral economics and spatial analysis with GIS/RS data education economics, sociology including urban sociology, rural sociology, environmental sociology and educational sociology, as well as traffic engineering. The journal provides a unique platform for its research community to further develop, analyze, and resolve urgent regional and urban issues in Asia, and to further refine established research around the world in this multidisciplinary field. The journal invites original articles, proposals, and book reviews.The Asia-Pacific Journal of Regional Science is a new English-language journal that spun out of Chiikigakukenkyuu, which has a 45-year history of publishing the best Japanese research in regional science in the Japanese language and, more recently and more frequently, in English. The development of regional science as an international discipline has necessitated the need for a new publication in English. The Asia-Pacific Journal of Regional Science is a publishing vehicle for English-language contributions to the field in Japan, across the complete Asia-Pacific arena, and beyond.Content published in this journal is peer reviewed (Double Blind).