Constructing HLM to examine multi-level poverty-contributing factors of farmer households: Why and how?

Accurately identifying poverty-contributing factors of farmer households in an all-round way is the critical prerequisite and guarantee for taking targeted measures in poverty alleviation. From the combined perspectives of multi-level comprehensive detection and human-nature sustainable development,...

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Main Authors: Yuewen Jiang, Chong Huang, Duoduo Yin, Chenxia Liang, Yanhui Wang
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2020-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0228032
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spelling doaj-aa3c0f8d170247ad8b31b62e1731588e2021-03-03T21:24:53ZengPublic Library of Science (PLoS)PLoS ONE1932-62032020-01-01151e022803210.1371/journal.pone.0228032Constructing HLM to examine multi-level poverty-contributing factors of farmer households: Why and how?Yuewen JiangChong HuangDuoduo YinChenxia LiangYanhui WangAccurately identifying poverty-contributing factors of farmer households in an all-round way is the critical prerequisite and guarantee for taking targeted measures in poverty alleviation. From the combined perspectives of multi-level comprehensive detection and human-nature sustainable development, this study has designed a multi-level index system of household-level, village-level, and town-level, and constructed a nested three-level hierarchical linear model to examine the poverty-contributing factors of farmer households, and to reveal the significant ones and their multi-level interaction mechanism. The case test from Fugong County shows that: (1) Poverty-contributing factors are multi-level, showing both individual and background effects. 77.14% of the poverty is caused by household-level factors, 6.24% by village-level ones and 16.62% by town-level factors. (2) Significant poverty-contributing factors at different levels are different, identifying different contribution degrees to poverty gaps of farmer households. Five household-level factors show significant influence on poverty degree and account for 70.95% of the overall poverty gap among poor households, 11.70% for four village-level significant factors and 86.80% for two town-level ones, respectively. (3) Higher-level factors have different degrees of influence on the contribution difference of lower-level ones. The two town-level factors, terrain relief and town per capita annual income have explained 59.38% of the difference of village-level proportion of migrant workers' contribution to poverty degree among towns and 89.89% of the difference of household-level per capita annual income's contribution to poverty degree among towns respectively. (4) Measures such as improving the type of access to roads, developing characteristic planting and breeding, and implementing relocation projects, can help poor households in the study area to reduce poverty. This study provides a new perspective for identifying farmers' poverty-contributing factors and technical reference and decision support for local departments to plan and implement targeted assistance and household-specific development policies.https://doi.org/10.1371/journal.pone.0228032
collection DOAJ
language English
format Article
sources DOAJ
author Yuewen Jiang
Chong Huang
Duoduo Yin
Chenxia Liang
Yanhui Wang
spellingShingle Yuewen Jiang
Chong Huang
Duoduo Yin
Chenxia Liang
Yanhui Wang
Constructing HLM to examine multi-level poverty-contributing factors of farmer households: Why and how?
PLoS ONE
author_facet Yuewen Jiang
Chong Huang
Duoduo Yin
Chenxia Liang
Yanhui Wang
author_sort Yuewen Jiang
title Constructing HLM to examine multi-level poverty-contributing factors of farmer households: Why and how?
title_short Constructing HLM to examine multi-level poverty-contributing factors of farmer households: Why and how?
title_full Constructing HLM to examine multi-level poverty-contributing factors of farmer households: Why and how?
title_fullStr Constructing HLM to examine multi-level poverty-contributing factors of farmer households: Why and how?
title_full_unstemmed Constructing HLM to examine multi-level poverty-contributing factors of farmer households: Why and how?
title_sort constructing hlm to examine multi-level poverty-contributing factors of farmer households: why and how?
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2020-01-01
description Accurately identifying poverty-contributing factors of farmer households in an all-round way is the critical prerequisite and guarantee for taking targeted measures in poverty alleviation. From the combined perspectives of multi-level comprehensive detection and human-nature sustainable development, this study has designed a multi-level index system of household-level, village-level, and town-level, and constructed a nested three-level hierarchical linear model to examine the poverty-contributing factors of farmer households, and to reveal the significant ones and their multi-level interaction mechanism. The case test from Fugong County shows that: (1) Poverty-contributing factors are multi-level, showing both individual and background effects. 77.14% of the poverty is caused by household-level factors, 6.24% by village-level ones and 16.62% by town-level factors. (2) Significant poverty-contributing factors at different levels are different, identifying different contribution degrees to poverty gaps of farmer households. Five household-level factors show significant influence on poverty degree and account for 70.95% of the overall poverty gap among poor households, 11.70% for four village-level significant factors and 86.80% for two town-level ones, respectively. (3) Higher-level factors have different degrees of influence on the contribution difference of lower-level ones. The two town-level factors, terrain relief and town per capita annual income have explained 59.38% of the difference of village-level proportion of migrant workers' contribution to poverty degree among towns and 89.89% of the difference of household-level per capita annual income's contribution to poverty degree among towns respectively. (4) Measures such as improving the type of access to roads, developing characteristic planting and breeding, and implementing relocation projects, can help poor households in the study area to reduce poverty. This study provides a new perspective for identifying farmers' poverty-contributing factors and technical reference and decision support for local departments to plan and implement targeted assistance and household-specific development policies.
url https://doi.org/10.1371/journal.pone.0228032
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