Graph-based Village Level Poverty Identification
- URL: http://arxiv.org/abs/2302.06862v1
- Date: Tue, 14 Feb 2023 06:58:40 GMT
- Title: Graph-based Village Level Poverty Identification
- Authors: Jing Ma, Liangwei Yang, Qiong Feng, Weizhi Zhang, Philip S. Yu
- Abstract summary: The development of the Web infrastructure and its modeling tools provides fresh approaches to identifying poor villages.
By modeling the village connections as a graph through the geographic distance, we show the correlation between village poverty status and its graph topological position.
We propose the first graph-based method to identify poor villages.
- Score: 52.12744462605759
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Poverty status identification is the first obstacle to eradicating poverty.
Village-level poverty identification is very challenging due to the arduous
field investigation and insufficient information. The development of the Web
infrastructure and its modeling tools provides fresh approaches to identifying
poor villages. Upon those techniques, we build a village graph for village
poverty status identification. By modeling the village connections as a graph
through the geographic distance, we show the correlation between village
poverty status and its graph topological position and identify two key factors
(Centrality, Homophily Decaying effect) for identifying villages. We further
propose the first graph-based method to identify poor villages. It includes a
global Centrality2Vec module to embed village centrality into the dense vector
and a local graph distance convolution module that captures the decaying
effect. In this paper, we make the first attempt to interpret and identify
village-level poverty from a graph perspective.
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