基于Getis-Ord (Gi*)的农民自杀热点检测

Amisha Bharti, S. Minz
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引用次数: 0

摘要

本文提出的农民自杀热点检测旨在减少农民的死亡。利用地理信息系统预测潜在的农民自杀热点是至关重要的。这项研究收集并分析了印度农民自杀的数据,使用了国家犯罪记录局的国家信息,并确定了最近农民自杀率较高的情况。空间统计分析工具,解决平均最近邻分析已被使用。通过Moran’s Index进行全局分析,分析农民自杀具有聚类模式,并利用Getis-Ord (Gi*)分析绘制了农民自杀热点图。结果显示,农民自杀指数最高的是马哈拉施特拉邦,因此,农民自杀热点已经被发现。农民自杀因素主要有农民自杀人数、农民人口密度、气候和收入四个方面。这一热点地理区域有助于通过研究热点地图来识别未来的自杀风险。此外,政府政策可能会提出一个热点地区,以帮助国家的整体发展增长。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Getis-Ord (Gi*) based Farmer Suicide Hotspot Detection
Farmer suicidal hotspot detection proposed in this paper aims to reduce the death of the farmers. Using geographical information system is vital in predicting potential hotspots for farmer suicide. This study has collected and analyzed data on farmer suicide in India, using state-wise information from the National Crime Records Bureau and has determined the recent higher rate of farmer suicide. Spatial statistics analysis tools that address average nearest neighbor analysis has been used. Global analysis through Moran's Index, analyzed that the farmer suicides have a clustered pattern and plotted a farmer suicidal hotspot map using Getis-Ord (Gi*) analysis. The results show the highest farmer suicide index is in Maharashtra and hence, farmer suicidal hotspot has been found district wise. There are four farmer suicidal factors such as, number of farmer suicide, the population density of farmers, climate, and income. This hotspot geographical region helps to identify future suicidal risk by studying the hotspot map. Moreover, government policy may suggest a hotspot zone to help the overall development of the country’s growth.
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